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Main Authors: Zhang, Hao, Niu, Yaru, Wang, Yikai, Zhao, Ding, Tseng, H. Eric
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.03741
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author Zhang, Hao
Niu, Yaru
Wang, Yikai
Zhao, Ding
Tseng, H. Eric
author_facet Zhang, Hao
Niu, Yaru
Wang, Yikai
Zhao, Ding
Tseng, H. Eric
contents To improve generalization and resilience in human-robot collaboration (HRC), robots must contend with diverse combinations of human behaviors and contexts, motivating multi-agent reinforcement learning (MARL). However, inherent heterogeneity between robots and humans creates a rationality gap (RG), where decentralized policy updates deviate from cooperative joint optimization. The resulting learning problem is a general-sum differentiable game, so independent policy-gradient updates can oscillate or diverge without added structure. We propose heterogeneous-agent Lyapunov policy optimization (HALO), a framework that stabilizes decentralized MARL by enforcing Lyapunov-based contraction in policy-parameter space. Unlike Lyapunov-based safe RL, which targets state/trajectory constraints in constrained Markov decision processes, HALO uses Lyapunov certification to stabilize decentralized policy learning. HALO rectifies decentralized gradients via optimal quadratic projections, ensuring monotonic contraction of RG and enabling effective exploration of open-ended interaction spaces. Extensive simulations and real-world humanoid-robot experiments show that this certified stability improves generalization and robustness in collaborative corner cases. Our project website is available at https://HaoZhang-THU.github.io/HALO/.
format Preprint
id arxiv_https___arxiv_org_abs_2603_03741
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle HALO: Learning Human-Robot Collaboration via Heterogeneous-Agent Lyapunov Policy Optimization
Zhang, Hao
Niu, Yaru
Wang, Yikai
Zhao, Ding
Tseng, H. Eric
Robotics
Artificial Intelligence
To improve generalization and resilience in human-robot collaboration (HRC), robots must contend with diverse combinations of human behaviors and contexts, motivating multi-agent reinforcement learning (MARL). However, inherent heterogeneity between robots and humans creates a rationality gap (RG), where decentralized policy updates deviate from cooperative joint optimization. The resulting learning problem is a general-sum differentiable game, so independent policy-gradient updates can oscillate or diverge without added structure. We propose heterogeneous-agent Lyapunov policy optimization (HALO), a framework that stabilizes decentralized MARL by enforcing Lyapunov-based contraction in policy-parameter space. Unlike Lyapunov-based safe RL, which targets state/trajectory constraints in constrained Markov decision processes, HALO uses Lyapunov certification to stabilize decentralized policy learning. HALO rectifies decentralized gradients via optimal quadratic projections, ensuring monotonic contraction of RG and enabling effective exploration of open-ended interaction spaces. Extensive simulations and real-world humanoid-robot experiments show that this certified stability improves generalization and robustness in collaborative corner cases. Our project website is available at https://HaoZhang-THU.github.io/HALO/.
title HALO: Learning Human-Robot Collaboration via Heterogeneous-Agent Lyapunov Policy Optimization
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2603.03741