Symmetry Detection and Breaking in Linear Cost-Optimal Numeric Planning

Alexander Shleyfman, Ryo Kuroiwa, J. Christopher Beck
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引用次数: 1

Abstract

One of the main challenges of domain-independent numeric planning is the complexity of the search problem. The exploitation of structural symmetries in a search problem can constitute an effective method of pruning search branches that may lead to exponential improvements in performance. For over a decade, symmetry breaking techniques have been successfully used within both optimal and satisficing classical planning. In this work, we show that symmetry detection methods applied in classical planning with some effort can be modified to detect symmetries in linear numeric planning. The detected symmetry group, thereafter, can be used almost directly in the A*-based symmetry breaking algorithms such as DKS and Orbit Space Search. We empirically validate that symmetry pruning can yield a substantial reduction in the search effort, even if algorithms are equipped with a strong heuristic, such as LM-cut.
线性成本最优数值规划中的对称性检测与破缺
领域无关数值规划的主要挑战之一是搜索问题的复杂性。在搜索问题中利用结构对称性可以构成修剪搜索分支的有效方法,从而可能导致性能的指数级提高。十多年来,对称性破缺技术已经成功地应用于最优规划和满足经典规划。在这项工作中,我们证明了在经典规划中应用的对称性检测方法可以通过一些改进来检测线性数值规划中的对称性。因此,检测到的对称群几乎可以直接用于基于A*的对称性破断算法,如DKS和轨道空间搜索。我们的经验证明,对称剪枝可以大大减少搜索工作量,即使算法配备了强大的启发式,如LM-cut。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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