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Main Authors: Luo, Qin-Wen, Xie, Ming-Kun, Wang, Ye-Wen, Huang, Sheng-Jun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.19923
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author Luo, Qin-Wen
Xie, Ming-Kun
Wang, Ye-Wen
Huang, Sheng-Jun
author_facet Luo, Qin-Wen
Xie, Ming-Kun
Wang, Ye-Wen
Huang, Sheng-Jun
contents Offline reinforcement learning (RL) aims to learn an effective policy from a static dataset. To alleviate extrapolation errors, existing studies often uniformly regularize the value function or policy updates across all states. However, due to substantial variations in data quality, the fixed regularization strength often leads to a dilemma: Weak regularization strength fails to address extrapolation errors and value overestimation, while strong regularization strength shifts policy learning toward behavior cloning, impeding potential performance enabled by Bellman updates. To address this issue, we propose the selective state-adaptive regularization method for offline RL. Specifically, we introduce state-adaptive regularization coefficients to trust state-level Bellman-driven results, while selectively applying regularization on high-quality actions, aiming to avoid performance degradation caused by tight constraints on low-quality actions. By establishing a connection between the representative value regularization method, CQL, and explicit policy constraint methods, we effectively extend selective state-adaptive regularization to these two mainstream offline RL approaches. Extensive experiments demonstrate that the proposed method significantly outperforms the state-of-the-art approaches in both offline and offline-to-online settings on the D4RL benchmark.
format Preprint
id arxiv_https___arxiv_org_abs_2505_19923
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning to Trust Bellman Updates: Selective State-Adaptive Regularization for Offline RL
Luo, Qin-Wen
Xie, Ming-Kun
Wang, Ye-Wen
Huang, Sheng-Jun
Machine Learning
Offline reinforcement learning (RL) aims to learn an effective policy from a static dataset. To alleviate extrapolation errors, existing studies often uniformly regularize the value function or policy updates across all states. However, due to substantial variations in data quality, the fixed regularization strength often leads to a dilemma: Weak regularization strength fails to address extrapolation errors and value overestimation, while strong regularization strength shifts policy learning toward behavior cloning, impeding potential performance enabled by Bellman updates. To address this issue, we propose the selective state-adaptive regularization method for offline RL. Specifically, we introduce state-adaptive regularization coefficients to trust state-level Bellman-driven results, while selectively applying regularization on high-quality actions, aiming to avoid performance degradation caused by tight constraints on low-quality actions. By establishing a connection between the representative value regularization method, CQL, and explicit policy constraint methods, we effectively extend selective state-adaptive regularization to these two mainstream offline RL approaches. Extensive experiments demonstrate that the proposed method significantly outperforms the state-of-the-art approaches in both offline and offline-to-online settings on the D4RL benchmark.
title Learning to Trust Bellman Updates: Selective State-Adaptive Regularization for Offline RL
topic Machine Learning
url https://arxiv.org/abs/2505.19923