Embrace the Differences: Revisiting the Pollyvote Method of Combining Forecasts for U.S. Presidential Elections (2004 to 2020)

A. Graefe
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引用次数: 5

Abstract

While combining forecasts is well-known to reduce error, the question of how to best combine forecasts remains. Prior research suggests that combining is most beneficial when relying on diverse forecasts that incorporate different information. Here I provide evidence in support of this hypothesis by analyzing data from the PollyVote project, which has published combined forecasts of the popular vote in U.S. presidential elections since 2004. Prior to the 2020 election, the PollyVote revised its original method of combining forecasts by, first, restructuring individual forecasts based on their underlying information and, second, adding naïve forecasts as a new component method. On average across the last 100 days prior to the five elections from 2004 to 2020, the revised PollyVote reduced the error of the original specification by eight percent and, with a mean absolute error of 0.8 percentage points, was more accurate than any of its component forecasts. The results suggest that, when deciding about which forecasts to include in the combination, forecasters should be more concerned about the component forecasts’ diversity than their historical accuracy.
拥抱差异:重新审视2004年至2020年美国总统选举综合预测的多重投票方法
虽然结合预测以减少误差是众所周知的,但如何最好地结合预测的问题仍然存在。先前的研究表明,当依赖于包含不同信息的不同预测时,组合是最有益的。在这里,我通过分析PollyVote项目的数据来提供支持这一假设的证据,该项目自2004年以来发布了对美国总统选举普选票数的综合预测。在2020年大选之前,PollyVote修改了原来的预测组合方法,首先,根据其基础信息重组单个预测,其次,添加naïve预测作为新的组成方法。从2004年到2020年的五次大选之前的100天里,修正后的PollyVote平均将原始规格的误差减少了8%,平均绝对误差为0.8个百分点,比其任何组成部分的预测都更准确。结果表明,在决定将哪些预测纳入组合时,预测者应该更关注组成部分预测的多样性,而不是其历史准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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