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Measuring the Impact of Campaign Finance on Congressional Voting: A Machine Learning Approach

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  • Matthias Lalisse

    (Johns Hopkins University)

Abstract

How much does money drive legislative outcomes in the United States? In this article, we use aggregated campaign finance data as well as a Transformer based text embedding model to predict roll call votes for legislation in the US Congress with more than 90% accuracy. In a series of model comparisons in which the input feature sets are varied, we investigate the extent to which campaign finance is predictive of voting behavior in comparison with variables like partisan affiliation. We find that the financial interests backing a legislator's campaigns are independently predictive in both chambers of Congress, but also uncover a sizable asymmetry between the Senate and the House of Representatives. These findings are cross-referenced with a Representational Similarity Analysis (RSA) linking legislators' financial and voting records, in which we show that "legislators who vote together get paid together", again discovering an asymmetry between the House and the Senate in the additional predictive power of campaign finance once party is accounted for. We suggest an explanation of these facts in terms of Thomas Ferguson's Investment Theory of Party Competition: due to a number of structural differences between the House and Senate, but chiefly the lower amortized cost of obtaining individuated influence with Senators, political investors prefer operating on the House using the party as a proxy.

Suggested Citation

  • Matthias Lalisse, 2022. "Measuring the Impact of Campaign Finance on Congressional Voting: A Machine Learning Approach," Working Papers Series inetwp178, Institute for New Economic Thinking.
  • Handle: RePEc:thk:wpaper:inetwp178
    DOI: 10.36687/inetwp178
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    Keywords

    campaign finance; congressional voting; investment theory of party competition; machine learning; Representational Similarity Analysis; political money;
    All these keywords.

    JEL classification:

    • H10 - Public Economics - - Structure and Scope of Government - - - General
    • D72 - Microeconomics - - Analysis of Collective Decision-Making - - - Political Processes: Rent-seeking, Lobbying, Elections, Legislatures, and Voting Behavior
    • P16 - Political Economy and Comparative Economic Systems - - Capitalist Economies - - - Capitalist Institutions; Welfare State
    • C45 - Mathematical and Quantitative Methods - - Econometric and Statistical Methods: Special Topics - - - Neural Networks and Related Topics

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