安全交互式模仿学习的不确定性感知策略采样和混合

Manfred Diaz, T. Fevens, L. Paull
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引用次数: 1

摘要

通过演示教机器人如何执行任务很有吸引力,因为它避免了明确指定奖励功能的需要。然而,将模仿学习作为一个简单的监督学习问题,会遇到众所周知的分布转移问题——老师只会展示最优轨迹,因此,如果学习者稍微偏离这个轨迹,因为它没有这种情况的训练数据,学习者就无法恢复。在文献中,这个问题已经被学习过程中的一些互动元素所克服——通常是在某种程度上穿插学习者和教师的执行,这样教师就可以向学习者展示如何从错误中恢复过来。在本文中,我们考虑了机器人有可能造成伤害的情况,因此必须在学习过程的每一步都施加安全。我们表明,不确定性是一种适当的安全措施,并且混合策略和数据采样过程都受益于考虑学习者和教师的不确定性。我们的方法,不确定性感知策略采样和混合(UPMS),被用来教一个代理在一条比最先进的方法更少违反安全规定和更少询问老师的车道上开车。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty-Aware Policy Sampling and Mixing for Safe Interactive Imitation Learning
Teaching robots how to execute tasks through demonstrations is appealing since it sidesteps the need to explicitly specify a reward function. However, posing imitation learning as a simple supervised learning problem suffers from the well-known problem of distributional shift - the teacher will only demonstrate the optimal trajectory and therefore the learner is unable to recover if it deviates even slightly from this trajectory since it has no training data for this case. This problem has been overcome in the literature by some element of interactivity in the learning process - usually be somehow interleaving the execution of the learner and the teacher so that the teacher can demonstrate to the learner also how to recover from mistakes. In this paper, we consider the cases where the robot has the potential to do harm, and therefore safety must be imposed at every step in the learning process. We show that uncertainty is an appropriate measure of safety and that both the mixing of the policies and the data sampling procedure benefit from considering the uncertainty of both the learner and the teacher. Our method, uncertainty-aware policy sampling and mixing (UPMS), is used to teach an agent to drive down a lane with less safety violations and less queries to the teacher than state-of-the-art methods.
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