cs.AI updates on arXiv.org 10月22日 12:27
多MDP场景下通用bisimulation度量方法研究
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本文提出了一种适用于多马尔可夫决策过程(MDP)的通用bisimulation度量方法(GBSM),通过严格证明其对称性、三角形不等性和距离界限等数学性质,为策略迁移、状态聚合和采样估计提供了更精确的理论界限。

arXiv:2509.18714v2 Announce Type: replace-cross Abstract: The bisimulation metric (BSM) is a powerful tool for computing state similarities within a Markov decision process (MDP), revealing that states closer in BSM have more similar optimal value functions. While BSM has been successfully utilized in reinforcement learning (RL) for tasks like state representation learning and policy exploration, its application to multiple-MDP scenarios, such as policy transfer, remains challenging. Prior work has attempted to generalize BSM to pairs of MDPs, but a lack of rigorous analysis of its mathematical properties has limited further theoretical progress. In this work, we formally establish a generalized bisimulation metric (GBSM) between pairs of MDPs, which is rigorously proven with the three fundamental properties: GBSM symmetry, inter-MDP triangle inequality, and the distance bound on identical state spaces. Leveraging these properties, we theoretically analyse policy transfer, state aggregation, and sampling-based estimation in MDPs, obtaining explicit bounds that are strictly tighter than those derived from the standard BSM. Additionally, GBSM provides a closed-form sample complexity for estimation, improving upon existing asymptotic results based on BSM. Numerical results validate our theoretical findings and demonstrate the effectiveness of GBSM in multi-MDP scenarios.

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bisimulation度量 多MDP 策略迁移 状态聚合 采样估计
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