塑形对于计算强化学习意味着什么?

Tom Erez, W. Smart
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引用次数: 48

摘要

本文考虑了整形在强化学习应用中的作用,并提出了整形的同伦延拓方法。通过将强化学习任务视为抽象任务空间中的元素,我们将塑造概念化为任务空间中的轨迹,从简单任务引导到更困难的任务。较早、较简单的任务的解决方案用于初始化和促进较晚、较困难的任务的解决方案。我们列出了强化学习任务可能被修改的不同方式,并回顾了使用延续方法的案例(其中大多数最初是在塑造的背景之外提出的)。我们将我们提出的观点与之前关于计算塑造的研究进行了对比,并反对将塑造与丰富的奖励方案等同起来的观点。最后,我们讨论了强化学习背景下整形计算研究的拟议研究议程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What does shaping mean for computational reinforcement learning?
This paper considers the role of shaping in applications of reinforcement learning, and proposes a formulation of shaping as a homotopy-continuation method. By considering reinforcement learning tasks as elements in an abstracted task space, we conceptualize shaping as a trajectory in task space, leading from simple tasks to harder ones. The solution of earlier, simpler tasks serves to initialize and facilitate the solution of later, harder tasks. We list the different ways reinforcement learning tasks may be modified, and review cases where continuation methods were employed (most of which were originally presented outside the context of shaping). We contrast our proposed view with previous work on computational shaping, and argue against the often-held view that equates shaping with a rich reward scheme. We conclude by discussing a proposed research agenda for the computational study of shaping in the context of reinforcement learning.
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