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Graph-Based Skill Acquisition For Reinforcement Learning

机译:基于图的技能学习以进行强化学习

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In machine learning, Reinforcement Learning (RL) is an important tool for creating intelligent agents that learn solely through experience. One particular subarea within the RL domain that has received great attention is how to define macro-actions, which are temporal abstractions composed of a sequence of primitive actions. This subarea, loosely called skill acquisition, has been under development for several years and has led to better results in a diversity of RL problems. Among the many skill acquisition approaches, graph-based methods have received considerable attention. This survey presents an overview of graph-based skill acquisition methods for RL. We cover a diversity of these approaches and discuss how they evolved throughout the years. Finally, we also discuss the current challenges and open issues in the area of graph-based skill acquisition for RL.
机译:在机器学习中,强化学习(RL)是创建仅通过经验进行学习的智能代理的重要工具。 RL域中受到关注的一个特定子区域是如何定义宏动作,这些动作是由一系列原始动作组成的时间抽象。这个子领域(俗称技能学习)已经开发了几年,并在解决RL问题方面带来了更好的结果。在许多技能获取方法中,基于图形的方法已受到相当多的关注。此调查概述了基于图的RL技能获取方法。我们介绍了这些方法的多样性,并讨论了这些年来它们如何演变。最后,我们还讨论了基于图的RL技能获取领域中的当前挑战和未解决的问题。

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