Simulating and Experimenting with Social Media Mobilization Using LLM Agents
Sadegh Shirani, Mohsen Bayati

TL;DR
This paper introduces an agent-based simulation framework using large language models to study political mobilization on social media, replicating real-world patterns and enabling controlled experiments.
Contribution
It develops a novel simulation environment integrating demographic data, social network topology, and LLM agents to analyze mobilization effects at scale.
Findings
Reproduces qualitative patterns of mobilization observed in field experiments.
Shows stronger effects under social message treatments.
Identifies measurable peer spillover effects.
Abstract
Online social networks have transformed the ways in which political mobilization messages are disseminated, raising new questions about how peer influence operates at scale. Building on the landmark 61-million-person Facebook experiment \citep{bond201261}, we develop an agent-based simulation framework that integrates real U.S. Census demographic distributions, authentic Twitter network topology, and heterogeneous large language model (LLM) agents to examine the effect of mobilization messages on voter turnout. Each simulated agent is assigned demographic attributes, a personal political stance, and an LLM variant (\texttt{GPT-4.1}, \texttt{GPT-4.1-Mini}, or \texttt{GPT-4.1-Nano}) reflecting its political sophistication. Agents interact over realistic social network structures, receiving personalized feeds and dynamically updating their engagement behaviors and voting intentions.…
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