AI RESEARCH

Safe Equilibrium Policy Optimization for Strategic Agent Policies

arXiv CS.AI

ArXi:2605.30854v1 Announce Type: cross Language models fine-tuned with reinforcement learning typically optimize for task reward, ignoring multi-agent strategic structure. Because these agents condition on natural language game-state descriptions and emit actions through free-form generation, strategic failure modes -- exploiting weaker opponents, coordinating on harmful equilibria, and externalizing costs are inseparable from the language interface itself. We propose Safe Equilibrium Policy Optimization (\sepo{}), a.