广义规划中的新颖性和提升的有益行为

C. Lei, N. Lipovetzky, Krista A. Ehinger
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引用次数: 0

摘要

最近的研究表明,经典规划中的成功技术,如目标导向启发式和路标,可以提高计算广义规划(GP)问题规划方案的能力。在这项工作中,我们引入了行动新颖性排名的概念,它计算了一个规划方案的新颖性,并提出了基于新颖性的广义规划求解器,如果新生成的规划方案的最频繁的行动重复大于给定的边界v,它会对其进行删减,由基于新颖性的最佳优先搜索BFS(v)和它的渐进变体PGP(v)实现。此外,我们在GP中引入了由行动方案派生出来的解除的有用行动,并提出了新的评估函数和结构程序限制以扩大搜索规模。我们的实验表明,新算法BFS(v)和PGP(v)在标准广义规划基准上优于GP中的最新技术。简要讨论了上述方法在总体规划中的应用结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novelty and Lifted Helpful Actions in Generalized Planning
It has been shown recently that successful techniques in classical planning, such as goal-oriented heuristics and landmarks, can improve the ability to compute planning programs for generalized planning (GP) problems. In this work, we introduce the notion of action novelty rank, which computes novelty with respect to a planning program, and propose novelty-based generalized planning solvers, which prune a newly generated planning program if its most frequent action repetition is greater than a given bound v, implemented by novelty-based best-first search BFS(v) and its progressive variant PGP(v). Besides, we introduce lifted helpful actions in GP derived from action schemes, and propose new evaluation functions and structural program restrictions to scale up the search. Our experiments show that the new algorithms BFS(v) and PGP(v) outperform the state-of-the-art in GP over the standard generalized planning benchmarks. Practical findings on the above-mentioned methods in generalized planning are briefly discussed.
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