一种新的重叠聚类检测的团枚举启发式算法

R. Schmitt, P. Ramos, Rafael de Santiago, L. Lamb
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引用次数: 2

摘要

有几种已知的方法可以检测图中的重叠社区,每种方法都有其优点和局限性。团渗透法(CPM)就是这样一种方法。CPM通过连接高度连接的子图(派系)并使用它来查找图社区来工作。然而,团枚举问题是np困难的,需要指数级的时间来求解。这使得在现实世界的大型网络和应用程序中使用它变得不切实际。本文的目的是提出一种有效的启发式方法来枚举派系。这使得Clique渗透方法能够在包含数千个节点的网络中检测重叠的社区。分析表明,我们的新启发式方法在解决方案质量方面与其他已知方法具有竞争力,并且我们还使CPM更具可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Clique enumeration heuristic for detecting overlapping clusters
There are several known methods for detecting overlapping communities in graphs, each one having their advantages and limitations. The Clique Percolation Method (CPM) is one such method. CPM works by joining highly connected subgraphs (cliques) and using it to find the graph communities. However, the clique enumeration problem is NP-Hard, taking exponential time to be solved. This makes its use impractical in large real-world networks and applications. The aim of this paper is to present an efficient heuristic to enumerate cliques. This enables the Clique Percolation Method to detect overlapping communities in networks containing thousands of nodes. The analyses showed that our novel heuristic is competitive with other known methods regarding solution quality and we also make the CPM more scalable.
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