Predicting United States policy outcomes with Random Forests
Shawn McGuire, Charles Delahunt

TL;DR
This study applies Random Forest classifiers to analyze U.S. policy outcomes, demonstrating that wealthy individuals and interest groups significantly influence legislation, with models predicting outcomes with about 70% accuracy, highlighting plutocratic tendencies.
Contribution
The paper introduces the use of Random Forests for predicting policy outcomes and identifying key interest groups, providing new insights beyond traditional statistical methods.
Findings
Random Forest models predict policy outcomes with ~70% accuracy.
Rich people's preferences and interest groups are highly predictive.
Feature selection highlights influential economic interest groups.
Abstract
Two decades of U.S. government legislative outcomes, as well as the policy preferences of rich people, the general population, and diverse interest groups, were captured in a detailed dataset curated and analyzed by Gilens, Page et al. (2014). They found that the preferences of the rich correlated strongly with policy outcomes, while the preferences of the general population did not, except via a linkage with rich people's preferences. Their analysis applied the tools of classical statistical inference, in particular logistic regression. In this paper we analyze the Gilens dataset using the complementary tools of Random Forest classifiers (RFs), from Machine Learning. We present two primary findings, concerning respectively prediction and inference: (i) Holdout test sets can be predicted with approximately 70% balanced accuracy by models that consult only the preferences of rich people…
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Taxonomy
TopicsElectoral Systems and Political Participation · Fiscal Policies and Political Economy
MethodsFeature Selection
