Jan 11, 2026
Emergent Strategic Behavior in Multi-Agent LLM Systems: A Study of Cooperation, Deception, and Coalition Formation
Benjamin Kiev
We investigate emergent strategic behaviors in decentralized multi-agent systems where Large Language Model (LLM) agents with private objectives interact through natural language communication. We design a simulation environment called Project X, a multi-round investment game that creates tension between individual gain and collective benefit. Agents
from heterogeneous LLM providers are assigned departmental roles with the sole objective of maximizing their own budget. Through public and private communication channels, agents
can coordinate, negotiate, deceive, or remain strategically silent. All communications and actions are logged for post-hoc behavioral analysis. This study examines whether complex social behaviors—including coalition formation, promise-breaking, free-riding, and strategic deception—emerge organically from goal-driven AI agents without explicit programming of such behaviors.
Our 50-round experiment revealed sustained coalition behavior among four agents, systematic free-riding by a single agent (with zero contributions across all rounds), and repeated
deceptive tactics including false promises and impersonation. Despite no contributions, the free-rider agent accumulated equal wealth to others, exploiting the symmetric payoff structure. These findings highlight how sophisticated social dynamics and exploitation strategies can emerge from minimal prompting in language-based agents.
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Cite this work
@misc {
title={
(HckPrj) Emergent Strategic Behavior in Multi-Agent LLM Systems: A Study of Cooperation, Deception, and Coalition Formation
},
author={
Benjamin Kiev
},
date={
1/11/26
},
organization={Apart Research},
note={Research submission to the research sprint hosted by Apart.},
howpublished={https://apartresearch.com}
}
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