Uncovering Political Bias in Large Language Models using Parliamentary Voting Records
Jieying Chen, Karen de Jong, Andreas Poole, Jan Burakowski, Elena Elderson Nosti, Joep Windt, and Chendi Wang

TL;DR
This paper presents a methodology to evaluate political bias in large language models by aligning their predictions with parliamentary voting records across three countries, revealing ideological tendencies and biases.
Contribution
It introduces a novel benchmark framework for assessing political bias in LLMs using real parliamentary data and visualization techniques for interpretability.
Findings
LLMs tend to be left-leaning or centrist.
Clear negative bias toward right-conservative parties.
Method enables cross-national and interpretable bias analysis.
Abstract
As large language models (LLMs) become deeply embedded in digital platforms and decision-making systems, concerns about their political biases have grown. While substantial work has examined social biases such as gender and race, systematic studies of political bias remain limited, despite their direct societal impact. This paper introduces a general methodology for constructing political bias benchmarks by aligning model-generated voting predictions with verified parliamentary voting records. We instantiate this methodology in three national case studies: PoliBiasNL (2,701 Dutch parliamentary motions and votes from 15 political parties), PoliBiasNO (10,584 motions and votes from 9 Norwegian parties), and PoliBiasES (2,480 motions and votes from 10 Spanish parties). Across these benchmarks, we assess ideological tendencies and political entity bias in LLM behavior. As part of our…
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Taxonomy
TopicsComputational and Text Analysis Methods · Sentiment Analysis and Opinion Mining · Ethics and Social Impacts of AI
