Author ORCID Identifier
Kaj Hansteen Izora: https://orcid.org/0009-0008-8817-3892
Christof Teuscher: https://orcid.org/0000-0002-5927-1900
Abstract
This study explores the capacity of large language model-powered agents to simulate human-like behavior in multi-agent social systems. Using Secret Hitler — a hidden-role board game centered on trust, deception, and strategic communication — we evaluate how LLM agents navigate dynamic group interactions. Our findings show that agents exhibit human-like behaviors, including strategic temporal adaptation, contextual reasoning, and complex social cognition such as theory of mind and implicit coordination. Notably, 85% of agent decisions factored in at least two other players’ mental states, highlighting their capacity for multi-agent mental state inference. However, they struggled with key aspects of human gameplay, including more nuanced strategic deception, emotional subtlety, and fluid conversational dynamics. These insights contribute to computational social science, agent-based modeling, and game theory, advancing our understanding of the potential of LLMs to simulate complex social interaction.
Recommended Citation
Hansteen Izora, Kaj and Teuscher, Christof
(2025)
"Exploring the Potential of Large Language Models (LLMs) to Simulate Social Group Dynamics: A Case Study Using the Board Game "Secret Hitler","
Northeast Journal of Complex Systems (NEJCS): Vol. 7
:
No.
2
, Article 5.
DOI: https://doi.org/10.63562/2577-8439.1111
Available at:
https://orb.binghamton.edu/nejcs/vol7/iss2/5
Included in
Artificial Intelligence and Robotics Commons, Experimental Analysis of Behavior Commons, Numerical Analysis and Computation Commons, Organizational Behavior and Theory Commons, Systems and Communications Commons