AI RESEARCH

Chaotic Dynamics in Multi-LLM Deliberation

arXiv CS.AI

ArXi:2603.09127v1 Announce Type: new Collective AI systems increasingly rely on multi-LLM deliberation, but their stability under repeated execution remains poorly characterized. We model five-agent LLM committees as random dynamical systems and quantify inter-run sensitivity using an empirical Lyapuno exponent ($\hat{\lambda}$) derived from trajectory divergence in committee mean preferences. Across 12 policy scenarios, a factorial design at $T=0$ identifies two independent routes to instability: role differentiation in homogeneous committees and model heterogeneity in no-role committees.