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Trees of Shortest Paths vs. Steiner Trees: Understanding and Improving Delete Relaxation Heuristics

机译:最短路径与施泰纳树木:理解和改善删除松弛启发式

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Heuristic search using heuristics extracted from the delete relaxation is one of the most effective methods in planning. Since finding the optimal solution of the delete relaxation is intractable, various heuristics introduce independence assumptions, the implications of which are not yet fully understood. Here we use concepts from graph theory to show that in problems with unary action preconditions, the delete relaxation is closely related to the Steiner Tree problem, and that the independence assumption for the set of goals results in a tree-of-shortest-paths approximation. We analyze the limitations of this approximation and develop an alternative method for computing relaxed plans that addresses them. The method is used to guide a greedy best-first search, where it is shown to improve plan quality and coverage over several benchmark domains.
机译:使用从删除放松提取的启发式搜索是计划中最有效的方法之一。由于发现删除放松的最佳解决方案是棘手的,因此各种启发式介绍独立性假设,其含义尚不完全理解。在这里,我们使用图表理论的概念表明,在一元行动前提条件存在问题中,删除放松与施泰纳问题密切相关,并且该集合的独立假设会导致最短路径近似。我们分析了这种近似的局限性,并开发了一种计算解决它们的轻松计划的替代方法。该方法用于指导贪婪最佳搜索,在那里显示出在几个基准域中提高计划质量和覆盖范围。

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