规划域的行动空间缩减

Harsha Kokel, Junkyu Lee, Michael Katz, Shirin Sohrabi, Kavitha Srinivas
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引用次数: 0

摘要

规划任务简洁地表示有标签的过渡系统,每个地面行动对应一个标签。然而,这种粒度对于解决计划任务并不是必需的,而且可能是有害的,特别是对于无模型方法。为了应用这些方法,标签集通常是手动减少的。在这项工作中,我们建议将这一手工过程自动化。我们描述了经典规划任务的有效标签缩减,并提出了一种利用解除互斥锁组获得这种有效缩减的自动化方法。我们的实验表明,在广泛的规划域集合中,动作标签空间大小显着减少。我们在两个独立的用例中展示了我们的自动标签减少的好处:提高了无模型强化学习算法的样本复杂性,加速解除计划中的后继生成。代码和补充材料可在https://github.com/IBM/Parameter-Seed-Set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。
Action Space Reduction for Planning Domains
Planning tasks succinctly represent labeled transition systems, with each ground action corresponding to a label. This granularity, however, is not necessary for solving planning tasks and can be harmful, especially for model-free methods. In order to apply such methods, the label sets are often manually reduced. In this work, we propose automating this manual process. We characterize a valid label reduction for classical planning tasks and propose an automated way of obtaining such valid reductions by leveraging lifted mutex groups. Our experiments show a significant reduction in the action label space size across a wide collection of planning domains. We demonstrate the benefit of our automated label reduction in two separate use cases: improved sample complexity of model-free reinforcement learning algorithms and speeding up successor generation in lifted planning. The code and supplementary material are available at https://github.com/IBM/Parameter-Seed-Set.
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