用启发式规则增强数据受限条件下离线强化学习的泛化

Briti Gangopadhyay;Zhao Wang;Jia-Fong Yeh;Shingo Takamatsu
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引用次数: 0

摘要

由于能够从静态数据集中学习,离线强化学习(RL)成为现实世界应用的一个引人注目的途径。然而,最先进的离线RL算法在面对局限于状态空间内特定区域的有限数据时表现不佳。性能下降是由于离线强化学习算法无法为罕见或未见过的观察学习适当的动作。本文提出了一种基于启发式规则的正则化技术,并自适应地改进了启发式的初始知识,从而大大提高了具有部分省略状态的有限数据的性能。关键的见解是,正则化项减轻了稀疏样本和领域知识覆盖的未观察状态的错误行为。对标准离线RL数据集的经验评估表明,与领域知识集成和现有离线RL算法在有限数据上运行相比,该算法的平均性能有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Generalization of Offline RL in Data-Limited Settings With Heuristic Rules
With the ability to learn from static datasets, OFFLINE reinforcement learning (RL) emerges as a compelling avenue for real-world applications. However, state-of-the-art offline RL algorithms perform suboptimally when confronted with limited data confined to specific regions within the state space. Performance degradation is attributed to the inability of offline RL algorithms to learn appropriate actions for rare or unseen observations. This article proposes a heuristic rule-based regularization technique and adaptively refines the initial knowledge from heuristics to considerably boost performance in limited data with partially omitted states. The key insight is that the regularization term mitigates erroneous actions for sparse samples and unobserved states covered by domain knowledge. Empirical evaluations on standard offline RL datasets demonstrate a substantial average performance increase compared to ensemble of domain knowledge and existing offline RL algorithms operating on limited data.
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