排列优化问题的对称解空间搜索

IF 18.6
Lixin Tang;Tianyang Li;Ying Meng;Jiyin Liu
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引用次数: 0

摘要

对称是自然界中普遍存在的现象。识别对称性可以减少冗余,提高计算效率。本文以与置换相关的组合优化问题为出发点,利用群理论探讨了其解空间的对称结构。从群作用的新视角出发,我们发现解空间中有意义的对称特征受制于目标函数的形式和被排列对象的数量两个条件。为了利用对称特征,我们设计了一种半解空间搜索策略,用于各种搜索算子,这些算子通常用于排列相关的组合优化问题。半解空间搜索策略可以使这些算子在不增加计算量的情况下探索更多有希望的区域。当物体数目不满足对称条件时,我们提出了二维映射方法来构造对称特征,使半解空间搜索策略适用。我们在3类常见的68个基准实例上对所提出的策略进行了评估,包括单行设施布局问题(SRFLP)、旅行商问题(TSP)和多目标旅行商问题(MOTSP)。实验结果表明,嵌入半解空间搜索策略的算法比不利用对称特征的算法具有更强的竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Searching in Symmetric Solution Space for Permutation-Related Optimization Problems
Symmetry is a widespread phenomenon in nature. Recognizing symmetry can minimize redundancy to improve computing efficiency. In this paper, we take permutation-related combinatorial optimization problems as a starting point and explore the symmetric structure of its solution space through group theory. From a new perspective of group action, we discover that the meaningful symmetric feature within the solution space is subject to two conditions regarding the form of objective function and the number of objects to be permuted. To exploit the symmetric features, we design a half-solution-space search strategy for various search operators, which are commonly used for permutation-related combinatorial optimization problems. The half-solution-space search strategy can make these operators explore more promising regions without additional computational effort. When the condition of object number for symmetry is unsatisfied, we propose two dimension mapping approaches to construct the symmetric feature, making the half-solution-space search strategy applicable. We evaluate the proposed strategy on three classes of popular 68 benchmark instances, including the single row facility layout problem (SRFLP), traveling salesman problem (TSP), and multi-objective traveling salesman problem (MOTSP). Experimental results show that algorithms embedded with the half-solution-space search strategy can achieve a more competitive performance than those not exploiting the symmetric features.
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