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General swap-based multiple neighborhood adaptive search for the maximum balanced biclique problem

机译:总基于交换的多个邻域自适应搜索最大平衡的BICLIQUE问题

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The maximum balanced biclique problem (MBBP) is to find the largest complete bipartite subgraph induced by two equal-sized subsets of vertices in a bipartite graph. MBBP is an NP-hard problem with a number of relevant applications. In this work, we propose a general swap-based multiple neighborhood adaptive search (SBMNAS) for MBBP. This algorithm combines a general k-SWAP operator which is used in local searches for MBBP for the first time, an adaptive rule for neighborhood exploration and a frequency-based perturbation strategy to ensure a global diversification. SBMNAS is evaluated on 60 random dense instances and 25 real-life large sparse instances from the popular Koblenz Network Collection (KONECT). Computational results show that our proposed algorithm attains all but one best-known solutions, and finds improved best-known results for 19 instances (new lower bounds). (C) 2020 Elsevier Ltd. All rights reserved.
机译:最大平衡的Biclique问题(MBBP)是在二分图中找到由两种相等大小的顶点子集引起的最大完整的二分位子图。 MBBP是一个有许多相关应用程序的NP难题。在这项工作中,我们为MBBP提出了一种基于交换的基于交换的多个邻域自适应搜索(SBMNAS)。该算法组合了一般的K-Swap操作员首次在本地搜索MBBP中使用,是邻域探索的自适应规则和基于频率的扰动策略,以确保全局多样化。 SBMNA是在60个随机密度的实例和来自流行的Koblenz网络收集(Konect)的25个真实大稀疏实例上进行评估。计算结果表明,我们的建议算法达到了所有,除了一个最着名的解决方案之外,并找到了19个实例(新下界)的改进了最着名的结果。 (c)2020 elestvier有限公司保留所有权利。

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