论文标题

用于广义计划的层次分解和分析

Hierarchical Decomposition and Analysis for Generalized Planning

论文作者

Srivastava, Siddharth

论文摘要

本文介绍了分析和评估可以解决广泛相关计划问题的广义计划的新方法。尽管对广义计划的综合和学习一直是AI的长期目标,但由于分析给定广义计划的范围和实用性的方法的基本差距,它仍然具有挑战性。本文通过开发一个新的概念框架以及证明技术和算法过程来解决这些差距,以评估广义计划的终止和目标可疑性相关属性。我们基于图理论的经典结果,将广义计划分解为较小的组成部分,然后将其用于得出层次结构的终止参数。这些方法可用于确定给定的广义计划的实用性,并指导通用计划的综合和学习过程。我们介绍了理论和经验结果,以说明这种新方法的范围。我们的分析表明,这种方法大大扩展了可以自动评估的广义计划类别,从而减少了可靠的广义计划的综合和学习障碍。

This paper presents new methods for analyzing and evaluating generalized plans that can solve broad classes of related planning problems. Although synthesis and learning of generalized plans has been a longstanding goal in AI, it remains challenging due to fundamental gaps in methods for analyzing the scope and utility of a given generalized plan. This paper addresses these gaps by developing a new conceptual framework along with proof techniques and algorithmic processes for assessing termination and goal-reachability related properties of generalized plans. We build upon classic results from graph theory to decompose generalized plans into smaller components that are then used to derive hierarchical termination arguments. These methods can be used to determine the utility of a given generalized plan, as well as to guide the synthesis and learning processes for generalized plans. We present theoretical as well as empirical results illustrating the scope of this new approach. Our analysis shows that this approach significantly extends the class of generalized plans that can be assessed automatically, thereby reducing barriers in the synthesis and learning of reliable generalized plans.

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