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Solving the Maximum Clique Problem by k-opt Local Search

机译:通过k-opt本地搜索解决最大派系问题

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摘要

This paper presents a local search algorithm based on variable depth search, called the k-opt local search, for the maximum clique problem. The k-opt local search performs add and drop moves, each of which can be interpreted as 1-opt move, to search a k-opt neighborhood solution at each iteration until no better k-opt neighborhood solution can be found. To evaluate our k-opt local search algorithm, we repeatedly apply the local search for each of DIMACS benchmark graphs and compare with the state-of-the-art meta-heuristics such as the genetic local search and the iterated local search reported previously. The computational results show that in spite of the absence of major metaheuristic components, the k-opt local search is capable of finding better (at least the same) solutions on average than those obtained by these metaheuristics for all the graphs.
机译:针对最大集团问题,本文提出了一种基于可变深度搜索的局部搜索算法,称为k-opt局部搜索。 k-opt本地搜索执行添加和删除移动,每个移动可以解释为1-opt移动,以在每次迭代中搜索k-opt邻域解,直到找不到更好的k-opt邻域解。为了评估我们的k-opt局部搜索算法,我们对每个DIMACS基准图重复应用局部搜索,并与最新的元启发式算法(如遗传局部搜索和先前报告的迭代局部搜索)进行比较。计算结果表明,尽管不存在主要的元启发式成分,但k-opt局部搜索平均能够找到比这些元启发式方法获得的所有图更好(至少相同)的解决方案。

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