SeRO: Self-Supervised Reinforcement Learning for Recovery from Out-of-Distribution Situations

Chan Kim, JaeKyung Cho, C. Bobda, Seung-Woo Seo, Seong-Woo Kim
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Abstract

Robotic agents trained using reinforcement learning have the problem of taking unreliable actions in an out-of-distribution (OOD) state. Agents can easily become OOD in real-world environments because it is almost impossible for them to visit and learn the entire state space during training. Unfortunately, unreliable actions do not ensure that agents perform their original tasks successfully. Therefore, agents should be able to recognize whether they are in OOD states and learn how to return to the learned state distribution rather than continue to take unreliable actions. In this study, we propose a novel method for retraining agents to recover from OOD situations in a self-supervised manner when they fall into OOD states. Our in-depth experimental results demonstrate that our method substantially improves the agent’s ability to recover from OOD situations in terms of sample efficiency and restoration of the performance for the original tasks. Moreover, we show that our method can retrain the agent to recover from OOD situations even when in-distribution states are difficult to visit through exploration. Code and supplementary materials are available at https://github.com/SNUChanKim/SeRO.
SeRO:自监督强化学习从非分布情况中恢复
使用强化学习训练的机器人代理存在在非分布状态下采取不可靠行动的问题。在现实环境中,智能体很容易成为OOD,因为在训练过程中,它们几乎不可能访问和学习整个状态空间。不幸的是,不可靠的操作不能确保代理成功执行其原始任务。因此,agent应该能够识别自己是否处于OOD状态,并学习如何返回到学习到的状态分布,而不是继续采取不可靠的动作。在这项研究中,我们提出了一种新的方法来重新训练智能体,当它们陷入OOD状态时,以一种自我监督的方式从OOD状态中恢复过来。我们的深入实验结果表明,我们的方法在样本效率和原始任务性能恢复方面大大提高了智能体从OOD情况中恢复的能力。此外,我们证明了我们的方法可以重新训练智能体从OOD情况中恢复,即使在分布状态难以通过探索访问的情况下。代码和补充材料可在https://github.com/SNUChanKim/SeRO上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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