Implicit policy constraint for offline reinforcement learning

IF 8.4 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE CAAI Transactions on Intelligence Technology Pub Date : 2024-03-15 DOI:10.1049/cit2.12304
Zhiyong Peng, Yadong Liu, Changlin Han, Zongtan Zhou
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Abstract

Offline reinforcement learning (RL) aims to learn policies entirely from passively collected datasets, making it a data-driven decision method. One of the main challenges in offline RL is the distribution shift problem, which causes the algorithm to visit out-of-distribution (OOD) samples. The distribution shift can be mitigated by constraining the divergence between the target policy and the behaviour policy. However, this method can overly constrain the target policy and impair the algorithm's performance, as it does not directly distinguish between in-distribution and OOD samples. In addition, it is difficult to learn and represent multi-modal behaviour policy when the datasets are collected by several different behaviour policies. To overcome these drawbacks, the authors address the distribution shift problem by implicit policy constraints with energy-based models (EBMs) rather than explicitly modelling the behaviour policy. The EBM is powerful for representing complex multi-modal distributions as well as the ability to distinguish in-distribution samples and OODs. Experimental results show that their method significantly outperforms the explicit policy constraint method and other baselines. In addition, the learnt energy model can be used to indicate OOD visits and alert the possible failure.

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离线强化学习的隐性策略约束
离线强化学习(RL)旨在完全从被动收集的数据集中学习策略,使其成为一种数据驱动的决策方法。离线强化学习面临的主要挑战之一是分布偏移问题,它会导致算法访问超出分布范围(OOD)的样本。可以通过限制目标策略和行为策略之间的分歧来缓解分布偏移问题。不过,这种方法可能会过度限制目标策略,影响算法性能,因为它不能直接区分分布内样本和 OOD 样本。此外,当数据集由几种不同的行为策略收集时,很难学习和表示多模式行为策略。为了克服这些缺点,作者通过基于能量的模型(EBM)隐含政策约束来解决分布转移问题,而不是明确地对行为政策进行建模。EBM 不仅能表示复杂的多模式分布,还能区分分布内样本和 OOD。实验结果表明,他们的方法明显优于显式策略约束方法和其他基线方法。此外,学习到的能量模型可用于指示 OOD 访问,并对可能出现的故障发出警报。
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来源期刊
CAAI Transactions on Intelligence Technology
CAAI Transactions on Intelligence Technology COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
11.00
自引率
3.90%
发文量
134
审稿时长
35 weeks
期刊介绍: CAAI Transactions on Intelligence Technology is a leading venue for original research on the theoretical and experimental aspects of artificial intelligence technology. We are a fully open access journal co-published by the Institution of Engineering and Technology (IET) and the Chinese Association for Artificial Intelligence (CAAI) providing research which is openly accessible to read and share worldwide.
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