Knowing our choices: unveiling true voting patterns through machine learning (ML) and natural language processing (NLP) in European Parliament

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    Abstract

    Anticipating the diverse voting behavior of European Parliament Members (MEPs) is complex due to their diverse backgrounds, affiliations, countries, and ideological stances. These factors result in varied preferences, posing a substantial analytical challenge in understanding and identifying significant patterns. This research is the pioneering venture in this field, specifically within the European Parliament (EP) context. To bridge this research gap, the study aims to forecast MEPs' voting behavior using semantic descriptors of legislative proposals through Machine Learning (ML), contributing insights to both Machine Learning and political science domains. Random Forests, Support Vector Machines (SVM), and Logistic Regression models are used and compared against a baseline to evaluate their predictive performance, where Random Forests emerged as a top model achieving 73-74% accuracy. The study also examines how MEPs' affiliations and ideologies impact voting predictability. Notably, extreme political ideologies correlate negatively with accuracy. Analyzing words and topics in legislative proposals, findings align with the shift after the 2014 8th EP election. The primary focus transitioned from left-right ideologies to pro and anti-European integration stances. Finally, the study highlights the potential of Machine Learning and Natural Language Processing (NLP) techniques combined with semantic descriptors of the laws to predict MEPs' voting behavior.
    Original languageEnglish
    Article number24
    Pages (from-to)1-27
    Number of pages27
    JournalSocial Network Analysis and Mining
    Volume15
    DOIs
    Publication statusPublished - 20 Mar 2025

    Keywords

    • machine learning (ML)
    • Members of the European Parliament (MEP)
    • natural language processing (NLP)
    • semantic descriptors
    • voting behavior

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