CLAIDec 9, 2024

Political-LLM: Large Language Models in Political Science

arXiv:2412.06864v132 citationsh-index: 30
Originality Synthesis-oriented
AI Analysis

It provides a systematic guide for researchers to use LLMs in political science tasks such as election prediction and misinformation detection, but it is incremental as it organizes existing knowledge rather than introducing new methods.

The paper tackles the integration of large language models (LLMs) into political science by proposing a framework called Political-LLM, which classifies existing work into political science and computational perspectives and identifies challenges like bias and fairness.

In recent years, large language models (LLMs) have been widely adopted in political science tasks such as election prediction, sentiment analysis, policy impact assessment, and misinformation detection. Meanwhile, the need to systematically understand how LLMs can further revolutionize the field also becomes urgent. In this work, we--a multidisciplinary team of researchers spanning computer science and political science--present the first principled framework termed Political-LLM to advance the comprehensive understanding of integrating LLMs into computational political science. Specifically, we first introduce a fundamental taxonomy classifying the existing explorations into two perspectives: political science and computational methodologies. In particular, from the political science perspective, we highlight the role of LLMs in automating predictive and generative tasks, simulating behavior dynamics, and improving causal inference through tools like counterfactual generation; from a computational perspective, we introduce advancements in data preparation, fine-tuning, and evaluation methods for LLMs that are tailored to political contexts. We identify key challenges and future directions, emphasizing the development of domain-specific datasets, addressing issues of bias and fairness, incorporating human expertise, and redefining evaluation criteria to align with the unique requirements of computational political science. Political-LLM seeks to serve as a guidebook for researchers to foster an informed, ethical, and impactful use of Artificial Intelligence in political science. Our online resource is available at: http://political-llm.org/.

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