AI RESEARCH

Adaptive Human-AI Coordination via Hierarchical Action Disentanglement

arXiv CS.AI

ArXi:2605.24343v1 Announce Type: new Human-AI collaboration requires agents that can adapt to diverse partner behaviors and skill levels while remaining robust to unseen partners. Existing methods often collapse to a single dominant behavior or learn poorly aligned skills, limiting effective coordination. We propose Intrinsic Action Disentanglement (IAD), a deep hierarchical reinforcement learning (DHRL) framework that learns distinct, partner-aware low-level action sequences conditioned on high-level latent skills.