Exposing and Explaining Fake News On-the-Fly
Abstract: Social media platforms enable the rapid dissemination and consumption of information. However, users instantly consume such content regardless of the reliability of the shared data. Consequently, the latter crowdsourcing model is exposed to manipulation. This work contributes with an explainable and online classification method to recognize fake news in real-time. The proposed method combines both unsupervised and supervised Machine Learning approaches with online created lexica. The profiling is built using creator-, content- and context-based features using Natural Language Processing techniques. The explainable classification mechanism displays in a dashboard the features selected for classification and the prediction confidence. The performance of the proposed solution has been validated with real data sets from Twitter and the results attain 80 % accuracy and macro F-measure. This proposal is the first to jointly provide data stream processing, profiling, classification and explainability. Ultimately, the proposed early detection, isolation and explanation of fake news contribute to increase the quality and trustworthiness of social media contents.
- \bibcommenthead
- Bondielli A, Marcelloni F (2019) A survey on fake news and rumour detection techniques. Information Sciences 497:38–55. 10.1016/j.ins.2019.05.035
- Liu Y, Wu YFB (2020) FNED A Deep Network for Fake News Early Detection on Social Media. ACM Transactions on Information Systems 38(3):1–33. 10.11453386253
- Shu K (2022) Combating disinformation on social media: A computational perspective. BenchCouncil Transactions on Benchmarks, Standards and Evaluations 2(1):100,035–100,040. 10.1016/j.tbench.2022.100035
- Sinaga KP, Yang MS (2020) Unsupervised K-Means Clustering Algorithm. IEEE Access 8:80,716–80,727. 10.1109ACCESS.2020.2988796
- Sutton RS, Barto AG (2018) Reinforcement learning: An introduction. MIT Press
- Tandoc EC (2019) The facts of fake news: A research review. Sociology Compass 13(9):12,724–12,732. 10.1111/soc4.12724
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