Transfer Learning for Spatial Autoregressive Models with Application to U.S. Presidential Election Prediction
Abstract: It is important to incorporate spatial geographic information into U.S. presidential election analysis, especially for swing states. The state-level analysis also faces significant challenges of limited spatial data availability. To address the challenges of spatial dependence and small sample sizes in predicting U.S. presidential election results using spatially dependent data, we propose a novel transfer learning framework within the SAR model, called as tranSAR. Classical SAR model estimation often loses accuracy with small target data samples. Our framework enhances estimation and prediction by leveraging information from similar source data. We introduce a two-stage algorithm, consisting of a transferring stage and a debiasing stage, to estimate parameters and establish theoretical convergence rates for the estimators. Additionally, if the informative source data are unknown, we propose a transferable source detection algorithm using spatial residual bootstrap to maintain spatial dependence and derive its detection consistency. Simulation studies show our algorithm substantially improves the classical two-stage least squares estimator. We demonstrate our method's effectiveness in predicting outcomes in U.S. presidential swing states, where it outperforms traditional methods. In addition, our tranSAR model predicts that the Democratic party will win the 2024 U.S. presidential election.
- Anselin, L. (1988). Spatial Econometrics: Methods and Models, volume 4 of Studies in Operational Regional Science. Springer Science & Business Media, Dordrecht.
- Prediction in the panel data model with spatial correlation. In Anselin, L., Florax, R. J. G. M., and Rey, S. J., editors, Advances in Spatial Econometrics: Methodology, Tools and Applications, Advances in Spatial Science, pages 283–295. Springer, Berlin, Heidelberg.
- Bastani, H. (2021). Predicting with proxies: Transfer learning in high dimension. Management Science, 67(5):2964–2984.
- Sparse Models and Methods for Optimal Instruments With an Application to Eminent Domain. Econometrica, 80(6):2369–2429.
- Transfer Learning for Contextual Multi-armed Bandits.
- Transfer learning for functional mean estimation: Phase transition and adaptive algorithms.
- Transfer learning for nonparametric regression: Non-asymptotic minimax analysis and adaptive procedure.
- Budget spillovers and fiscal policy interdependence: Evidence from the states. Journal of Public Economics, 52(3):285–307.
- Select the valid and relevant moments: An information-based LASSO for GMM with many moments. Journal of Econometrics, 186(2):443–464.
- Spatial Autocorrelation. Pion, London.
- Model building and the analysis of spatial pattern in human geography. Journal of the Royal Statistical Society: Series B (Methodological), 37(3):297–328.
- Endogeneity in high dimensions. The Annals of Statistics, 42(3):872–917.
- Inference for high-dimensional instrumental variables regression. Journal of Econometrics, 217(1):79–111.
- Grennan, J. (2019). Dividend payments as a response to peer influence. Journal of Financial Economics, 131(3):549–570.
- Shrinkage estimation of network spillovers with factor structured errors. Journal of Econometrics, 233(1):66–87.
- Optimal parameter-transfer learning by semiparametric model averaging. Journal of Machine Learning Research, 24(358):1–53.
- A generalized spatial two-stage least squares procedure for estimating a spatial autoregressive model with autoregressive disturbances. The Journal of Real Estate Finance and Economics, 17(1):99–121.
- A generalized moments estimator for the autoregressive parameter in a spatial model. International Economic Review, 40(2):509–533.
- Kostov, P. (2009). A spatial quantile regression hedonic model of agricultural land prices. Spatial Economic Analysis, 4(1):53–72.
- Lee, L.-f. (2003). Best spatial two-stage least squares estimators for a spatial autoregressive model with autoregressive disturbances. Econometric Reviews, 22(4):307–335.
- Lee, L.-f. (2004). Asymptotic distributions of quasi-maximum likelihood estimators for spatial autoregressive models. Econometrica, 72(6):1899–1925.
- Lee, L.-f. (2007). GMM and 2SLS estimation of mixed regressive, spatial autoregressive models. Journal of Econometrics, 137(2):489–514.
- Efficient GMM estimation of spatial dynamic panel data models with fixed effects. Journal of Econometrics, 180(2):174–197.
- Targeting underrepresented populations in precision medicine: A federated transfer learning approach.
- Estimation and inference with proxy data and its genetic applications.
- Transfer learning for high-dimensional linear regression: Prediction, estimation and minimax optimality. Journal of the Royal Statistical Society: Series B (Statistical Methodology), 84(1):149–173.
- Transfer Learning in Large-Scale Gaussian Graphical Models with False Discovery Rate Control. Journal of the American Statistical Association, 118(543):2171–2183.
- GMM estimation of social interaction models with centrality. Journal of Econometrics, 159(1):99–115.
- High-dimensional regression with noisy and missing data: Provable guarantees with nonconvexity. The Annals of Statistics, 40(3):1637–1664.
- Uniform uncertainty principle for bernoulli and subgaussian ensembles. Constructive Approximation, 28(3):277–289.
- A unified framework for high-dimensional analysis of M-estimators with decomposable regularizers. In Bengio, Y., Schuurmans, D., Lafferty, J., Williams, C., and Culotta, A., editors, Advances in Neural Information Processing Systems, volume 22. Curran Associates, Inc.
- Spatial regression and geostatistics discourse with empirical application to precipitation data in Nigeria. Scientific Reports, 11(1):16848.
- Ord, J. K. (1975). Estimation methods for models of spatial interaction. Journal of the American Statistical Association, 70(349):120–126.
- A survey on transfer learning. IEEE Transactions on knowledge and data engineering, 22(10):1345–1359.
- GIS for get-out-the-vote campaigns using spatial tools, local governments can locate underrepresented communities to improve voter outreach and registration efforts. Geospatial solutions, 14:42–57.
- Does corporate headquarters location matter for stock returns? The Journal of Finance, page 25.
- Restricted eigenvalue properties for correlated gaussian designs. Journal of Machine Learning Research, 11:2241–2259.
- Transfer learning under high-dimensional generalized linear models. Journal of the American Statistical Association, 118(544):2684–2697.
- Transfer learning. In Handbook of Research on Machine Learning Applications and Trends: Algorithms, Methods, and Techniques, pages 242–264. IGI global, hershey edition.
- On the conditions used to prove oracle results for the Lasso. Electronic Journal of Statistics, 3(none).
- Spatial autoregressive models for statistical inference from ecological data. Ecological Monographs, 88(1):36–59.
- Spatial weights matrix selection and model averaging for spatial autoregressive models. Journal of Econometrics, 203(1):1–18.
- Zhu, Y. (2018). Sparse linear models and l1-regularized 2SLS with high-dimensional endogenous regressors and instruments. Journal of Econometrics, 202(2):196–213.
- A comprehensive survey on transfer learning. Proceedings of the IEEE, 109(1):43–76.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.