Regional heterogeneity and U.S. presidential elections: Real-time 2020 forecasts and evaluation

Volume: 38, Issue: 2, Pages: 662 - 687
Published: Apr 1, 2022
Abstract
This paper exploits cross-sectional variation at the level of U.S. counties to generate real-time forecasts for the 2020 U.S. presidential election. The forecasting models are trained on data covering the period 2000–2016, using high-dimensional variable selection techniques. Our county-based approach contrasts the literature that focuses on national and state level data but uses longer time periods to train their models. The paper reports...
Paper Details
Title
Regional heterogeneity and U.S. presidential elections: Real-time 2020 forecasts and evaluation
Published Date
Apr 1, 2022
Volume
38
Issue
2
Pages
662 - 687
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