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An Algorithm to Find Overlapping Community Structure in Networks

机译:寻找网络中重叠社区结构的算法

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Recent years have seen the development of many graph clustering algorithms, which can identify community structure in networks. The vast majority of these only find disjoint communities, but in many real-world networks communities overlap to some extent. We present a new algorithm for discovering overlapping communities in networks, by extending Girvan and Newman's well-known algorithm based on the betweenness centrality measure. Like the original algorithm, ours performs hierarchical clustering - partitioning a network into any desired number of clusters - but allows them to overlap. Experiments confirm good performance on randomly generated networks based on a known overlapping community structure, and interesting results have also been obtained on a range of real-world networks.
机译:近年来,已经看到了许多图聚类算法的发展,这些算法可以识别网络中的社区结构。这些中的绝大多数仅找到不相交的社区,但是在许多现实世界的网络中,社区在某种程度上重叠。通过扩展Girvan和Newman基于中介中心性度量的著名算法,我们提出了一种新的发现网络重叠社区的算法。与原始算法一样,我们的算法执行分层聚类-将网络划分为任意数量的聚类-但允许它们重叠。实验证实了基于已知重叠社区结构在随机生成的网络上的良好性能,并且在一系列实际网络上也获得了有趣的结果。

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