学习机制对变量邻域搜索的影响

R. Aziz, M. Ayob, Z. Othman
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引用次数: 3

摘要

可变邻域搜索(VNS)算法的基本思想是利用一组预定义的邻域结构系统地探索当前解的邻域。由于不同的问题实例具有不同的环境和复杂性,选择应用哪种邻域结构是一项具有挑战性的任务。不同的邻域结构可能导致不同的解空间。因此,本工作提出了一种可变邻域搜索(VNS)的学习机制,以下简称为可变邻域引导搜索(VNGS)。通过解决一个课程排课问题,说明了该方法的有效性。学习机制记忆哪一个邻域结构可以有效解决特定的软约束违规,并以此来指导邻域结构的选择,以提高最优解的质量。在Socha课程排课数据集上测试了VNGS的性能。结果表明,VNGS的性能与其他VNS变体的结果相当,并且在某些情况下优于其他VNS变体。这证明了在VNS算法中应用学习机制的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The effect of learning mechanism in Variables Neighborhood Search
The basic idea of the Variable Neighborhood Search (VNS) algorithm is to systematically explore the neighborhood of current solution using a set of predefined neighborhood structures. Since different problem instances have different landscape and complexity, the choice of which neighborhood structure to be applied is a challenging task. Different neighborhood structures may lead to different solution space. Therefore, this work proposes a learning mechanism in a Variable Neighborhood Search (VNS), refer to hereafter as a Variable Neighborhood Guided Search (VNGS). Its effectiveness is illustrated by solving a course timetabling problems. The learning mechanism memorizes which neighborhood structure could effectively solve a specific soft constraint violations and used it to guide the selection of neighborhood structure to enhance the quality of a best solution. The performance of the VNGS is tested over Socha course timetabling dataset. Results demonstrate that the performance of the VNGS is comparable with the results of the other VNS variants and outperformed others in some instances. This demonstrates the effectiveness of applying a learning mechanism in a VNS algorithm.
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