Framework of Voting Prediction of Parliament Members
Zahi Mizrahi, Shai Berkovitz, Nimrod Talmon, Michael Fire

TL;DR
This paper introduces a machine learning-based framework for predicting parliamentary voting outcomes at the individual and bill levels, using extensive cross-country voting data to improve transparency and legislative analysis.
Contribution
It presents the Voting Prediction Framework (VPF), a novel, open-source, data-driven system integrating data collection, feature processing, and machine learning models for cross-national vote prediction.
Findings
Achieved up to 85% precision in individual vote prediction
Reached 84% accuracy in overall bill outcome prediction
Validated across five countries with over 5 million voting records
Abstract
Keeping track of how lawmakers vote is essential for government transparency. While many parliamentary voting records are available online, they are often difficult to interpret, making it challenging to understand legislative behavior across parliaments and predict voting outcomes. Accurate prediction of votes has several potential benefits, from simplifying parliamentary work by filtering out bills with a low chance of passing to refining proposed legislation to increase its likelihood of approval. In this study, we leverage advanced machine learning and data analysis techniques to develop a comprehensive framework for predicting parliamentary voting outcomes across multiple legislatures. We introduce the Voting Prediction Framework (VPF) - a data-driven framework designed to forecast parliamentary voting outcomes at the individual legislator level and for entire bills. VPF consists…
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Taxonomy
TopicsBenford’s Law and Fraud Detection · Sentiment Analysis and Opinion Mining · Computational and Text Analysis Methods
