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Coalition Formation in LLM Agent Networks: Stability Analysis and Convergence Guarantees

Dongxin Guo, Jikun Wu, Siu-Ming Yiu

36

Recommendation Score

breakthrough🔴 AdvancedReasoning & AgentsAI AgentsSystemUseful for both

Research context

Primary field

Reasoning & Agents

Reasoning, planning, tool use, and agentic workflows.

Topics

AI Agents

Paper type

System

Best for

Useful for both

arXiv categories

cs.GTcs.AIcs.GT

Why It Matters

This work formally models LLM agent coalitions using hedonic game theory, providing the first stability and convergence guarantees—critical for deploying reliable, cooperative multi-agent systems in real-world environments.

Abstract

Large Language Model (LLM) agents are increasingly deployed in multi-agent systems requiring strategic coordination. While recent work has analyzed LLM behavior in two-player games, coalition formation, where $n$ agents dynamically form cooperative groups, remains theoretically uncharacterized. We present the first framework grounding coalition formation in LLM agent networks in hedonic game theory with formal stability guarantees. We introduce the LLM Coalition Formation Game (LCFG), establish sufficient conditions for Nash-stable partitions, and prove complexity results. Our analysis reveals that LLM agents exhibit bounded rationality characterized by $ε$-rational preferences; we provide both deterministic existence guarantees and consistency-driven stability bounds whose predictions are consistent with empirical outcomes. Experiments with GPT-4, Claude-3, and Llama-3 across 2,400 episodes validate our framework: LLM coalitions achieve Nash stability in 73.2% of cases under our Coalition-of-Thought (CoalT) protocol, compared to 58.4% under chain-of-thought and 41.8% under standard prompting ($p < 0.001$). Our framework provides theoretical foundations for designing stable multi-agent LLM systems.

Published April 15, 2026
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