EmoMAS: Emotion-Aware Multi-Agent System for High-Stakes Edge-Deployable Negotiation with Bayesian Orchestration
arXiv cs.AI / 4/10/2026
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Key Points
- The paper introduces EmoMAS, an emotion-aware multi-agent negotiation system designed to reduce the computational cost and privacy risks of using large language models in on-device, high-stakes settings.
- EmoMAS uses a Bayesian orchestration layer to coordinate three specialized agents—game-theoretic, reinforcement learning, and psychological-coherence models—to make emotional decisions strategic rather than merely reactive.
- The framework continuously updates the reliability of each agent based on negotiation feedback and optimizes emotional state transitions using fused real-time signals from the agents.
- Unlike approaches requiring heavy pre-training, EmoMAS claims to achieve online strategy learning via a mixture-of-agents architecture.
- The authors also propose four new edge-deployable negotiation benchmarks (debt, healthcare, emergency response, education) and report that both SLMs and LLMs augmented with EmoMAS outperform baselines while maintaining ethical behavior.



