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ElectionSim: Massive Population Election Simulation Powered by Large Language Model Driven Agents

28 October 2024
X. Zhang
Jiayu Lin
L. Sun
Weihong Qi
Yihang Yang
Y. Chen
Hanjia Lyu
Xinyi Mou
Siming Chen
Jiebo Luo
Xuanjing Huang
Shiping Tang
Zhongyu Wei
    LLMAG
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Abstract

The massive population election simulation aims to model the preferences of specific groups in particular election scenarios. It has garnered significant attention for its potential to forecast real-world social trends. Traditional agent-based modeling (ABM) methods are constrained by their ability to incorporate complex individual background information and provide interactive prediction results. In this paper, we introduce ElectionSim, an innovative election simulation framework based on large language models, designed to support accurate voter simulations and customized distributions, together with an interactive platform to dialogue with simulated voters. We present a million-level voter pool sampled from social media platforms to support accurate individual simulation. We also introduce PPE, a poll-based presidential election benchmark to assess the performance of our framework under the U.S. presidential election scenario. Through extensive experiments and analyses, we demonstrate the effectiveness and robustness of our framework in U.S. presidential election simulations.

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