Quantum inspired genetic algorithm for community structure detection in social networks

Shikha Gupta, S. Taneja, Naveen Kumar
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引用次数: 6

Abstract

Community detection is a key problem in social network analysis. We propose a two-phase algorithm for detecting community structure in social networks. First phase employs a local-search method to group together nodes that have a high chance of falling in a single community. The second phase is bi-partitioning strategy that optimizes network modularity and deploys a variant of quantum-inspired genetic algorithm. The proposed algorithm does not require any knowledge of the number of communities beforehand and works well for both directed and undirected networks. Experiments on synthetic and real-life networks show that the method is able to successfully reveal community structure with high modularity.
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基于量子遗传算法的社交网络社区结构检测
社区检测是社会网络分析中的一个关键问题。我们提出了一种两阶段算法来检测社交网络中的社区结构。第一阶段采用局部搜索方法,将落在单个社区中的概率较高的节点分组在一起。第二阶段是双分区策略,优化网络模块化并部署一种量子启发遗传算法的变体。该算法不需要事先知道社区的数量,对有向网络和无向网络都能很好地工作。在合成网络和现实网络上的实验表明,该方法能够成功地揭示具有高度模块化的社区结构。
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