离线强化学习的离散不确定性量化

IF 3.3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
José Luis Pérez, Javier Corrochano, Javier García, Rubén Majadas, Cristina Ibañez-Llano, Sergio Pérez, Fernando Fernández
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引用次数: 0

摘要

在许多强化学习(RL)任务中,学习代理与环境的经典在线交互是不切实际的,因为这种交互要么昂贵要么危险。在这些情况下,可以使用以前收集的数据,产生通常称为离线RL的情况。然而,这种类型的学习面临着大量挑战,主要来自于探索/开发权衡被掩盖的事实。此外,历史数据通常会因其获得方式而产生偏差,通常是次最优控制器,从而产生历史数据和学习最优策略所需的分布偏移。在本文中,我们提出了一种新的方法来处理由于学习数据中某些状态-动作对的缺失或稀疏存在而产生的不确定性。我们的方法是基于塑造从环境中感知到的奖励,以确保任务得到解决。我们提出了这种方法,并表明将其与经典的在线强化学习方法相结合,使它们的性能与最先进的离线强化学习算法(如CQL和BCQ)一样好。最后,我们证明了在已建立的离线学习算法之上使用我们的方法可以改进它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discrete Uncertainty Quantification For Offline Reinforcement Learning
Abstract In many Reinforcement Learning (RL) tasks, the classical online interaction of the learning agent with the environment is impractical, either because such interaction is expensive or dangerous. In these cases, previous gathered data can be used, arising what is typically called Offline RL. However, this type of learning faces a large number of challenges, mostly derived from the fact that exploration/exploitation trade-off is overshadowed. In addition, the historical data is usually biased by the way it was obtained, typically, a sub-optimal controller, producing a distributional shift from historical data and the one required to learn the optimal policy. In this paper, we present a novel approach to deal with the uncertainty risen by the absence or sparse presence of some state-action pairs in the learning data. Our approach is based on shaping the reward perceived from the environment to ensure the task is solved. We present the approach and show that combining it with classic online RL methods make them perform as good as state of the art Offline RL algorithms such as CQL and BCQ. Finally, we show that using our method on top of established offline learning algorithms can improve them.
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来源期刊
Journal of Artificial Intelligence and Soft Computing Research
Journal of Artificial Intelligence and Soft Computing Research COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
7.00
自引率
25.00%
发文量
10
审稿时长
24 weeks
期刊介绍: Journal of Artificial Intelligence and Soft Computing Research (available also at Sciendo (De Gruyter)) is a dynamically developing international journal focused on the latest scientific results and methods constituting traditional artificial intelligence methods and soft computing techniques. Our goal is to bring together scientists representing both approaches and various research communities.
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