How time and pollster history affect U.S. election forecasts under a compartmental modeling approach

Autor: Branstetter, Ryan, Chian, Samuel, Cromp, Joseph, He, William L, Lee, Christopher M, Liu, Mengqi, Mansell, Emma, Paranjape, Manas, Pattanashetty, Thanmaya, Rodrigues, Alexia, Volkening, Alexandria
Rok vydání: 2024
Předmět:
Druh dokumentu: Working Paper
Popis: In the months leading up to political elections in the United States, forecasts are widespread and take on multiple forms, including projections of what party will win the popular vote, state ratings, and predictions of vote margins at the state level. It can be challenging to evaluate how accuracy changes in the lead up to Election Day or to put probabilistic forecasts into historical context. Moreover, forecasts differ between analysts, highlighting the many choices in the forecasting process. With this as motivation, here we take a more comprehensive view and begin to unpack some of the choices involved in election forecasting. Building on a prior compartmental model of election dynamics, we present the forecasts of this model across months, years, and types of race. By gathering together monthly forecasts of presidential, senatorial, and gubernatorial races from 2004--2022, we provide a larger-scale perspective and discuss how treating polling data in different ways affects forecast accuracy. We conclude with our 2024 election forecasts (upcoming at the time of writing).
Comment: For our 2024 forecasts, see: https://c-r-u-d.gitlab.io/2024/. Our code is available at: https://gitlab.com/alexandriavolkening/forecasting-elections-using-compartmental-models-2
Databáze: arXiv