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Decoupled Prioritized Resampling for Offline RL

Machine Learning 2025-01-09 v4 Artificial Intelligence

Abstract

Offline reinforcement learning (RL) is challenged by the distributional shift problem. To address this problem, existing works mainly focus on designing sophisticated policy constraints between the learned policy and the behavior policy. However, these constraints are applied equally to well-performing and inferior actions through uniform sampling, which might negatively affect the learned policy. To alleviate this issue, we propose Offline Prioritized Experience Replay (OPER), featuring a class of priority functions designed to prioritize highly-rewarding transitions, making them more frequently visited during training. Through theoretical analysis, we show that this class of priority functions induce an improved behavior policy, and when constrained to this improved policy, a policy-constrained offline RL algorithm is likely to yield a better solution. We develop two practical strategies to obtain priority weights by estimating advantages based on a fitted value network (OPER-A) or utilizing trajectory returns (OPER-R) for quick computation. OPER is a plug-and-play component for offline RL algorithms. As case studies, we evaluate OPER on five different algorithms, including BC, TD3+BC, Onestep RL, CQL, and IQL. Extensive experiments demonstrate that both OPER-A and OPER-R significantly improve the performance for all baseline methods. Codes and priority weights are availiable at https://github.com/sail-sg/OPER.

Keywords

Cite

@article{arxiv.2306.05412,
  title  = {Decoupled Prioritized Resampling for Offline RL},
  author = {Yang Yue and Bingyi Kang and Xiao Ma and Qisen Yang and Gao Huang and Shiji Song and Shuicheng Yan},
  journal= {arXiv preprint arXiv:2306.05412},
  year   = {2025}
}

Comments

published on IEEE TNNLS

R2 v1 2026-06-28T11:00:20.112Z