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Online Identification of Useful Macro-Actions for Planning

机译:在线确定计划中有用的宏观行动

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摘要

This paper explores issues encountered when performing online management of large collections of macro-actions generated for use in planning. Existing approaches to managing collections of macro-actions are designed for use with offline macro-action learning, pruning candidate macro-actions on the basis of their effect on the performance of the planner on small training problems. In this paper we introduce macro-action pruning techniques based on properties of macro-actions that can be discovered online, whilst solving only the problems we are interested in. In doing so, we remove the requirement for additional training problems and offline filtering. We also show how search-time pruning techniques allow the planner to scale well to managing large collections of macro-actions. Further, we discuss the properties of macro-actions that allow the online identification of those that are likely to be useful in search. Finally, we present results to demonstrate that a library of macro-actions managed using the techniques described can give rise to a significant performance improvement across a collection of domains with varied structure.
机译:本文探讨了在对计划中使用的大量宏观行动进行在线管理时遇到的问题。现有的管理宏动作集合的方法设计用于脱机宏动作学习,并根据候选宏动作对计划者在小型培训问题上的表现产生的影响来修剪候选宏动作。在本文中,我们介绍了基于可以在网上发现的宏动作特性的宏动作修剪技术,同时仅解决了我们感兴趣的问题。这样做,我们消除了对其他训练问题和脱机过滤的要求。我们还展示了搜索时修剪技术如何使计划者能够很好地扩展以管理大量的宏动作。此外,我们讨论了宏操作的属性,这些属性允许在线识别可能对搜索有用的宏。最后,我们提出的结果表明,使用所述技术管理的宏动作库可以在结构变化的域集合中带来显着的性能改进。

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