Transfer Learning for Spatial Autoregressive Models with Application to U.S. Presidential Election Prediction
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...
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Zusammenfassung: | 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. |
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DOI: | 10.48550/arxiv.2405.15600 |