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Scalable detection of statistically significant communities and hierarchies using message passing for modularity

机译:使用消息传递实现模块化可扩展地检测具有统计意义的社区和层次结构

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摘要

Modularity is a popular measure of community structure. However, maximizing the modularity can lead to many competing partitions, with almost the same modularity, that are poorly correlated with each other. It can also produce illusory ‘‘communities’’ in random graphs where none exist. We address this problem by using the modularity as a Hamiltonian at finite temperature and using an efficient belief propagation algorithm to obtain the consensus of many partitions with high modularity, rather than looking for a single partition that maximizes it. We show analytically and numerically that the proposed algorithm works all of the way down to the detectability transition in networks generated by the stochastic block model. It also performs well on real-world networks, revealing large communities in some networks where previous work has claimed no communities exist. Finally we show that by applying our algorithm recursively, subdividing communities until no statistically significant subcommunities can be found, we can detect hierarchical structure in real-world networks more efficiently than previous methods.
机译:模块化是社区结构的流行度量。但是,最大化模块化可能会导致许多竞争性分区,它们具有几乎相同的模块化,并且彼此之间的关联性很差。它还可以在不存在的随机图中生成虚幻的“社区”。我们通过使用模块性作为有限温度下的哈密顿量并使用有效的置信度传播算法来获得许多具有高模块性的分区的共识,而不是寻找使它最大化的单个分区来解决这个问题。我们通过分析和数值分析表明,所提出的算法一直有效,直到由随机块模型生成的网络中的可检测性转换为止。它在现实世界的网络上也表现良好,可以揭示某些网络中的大型社区,而以前的工作声称这些社区不存在社区。最后,我们证明了通过递归应用我们的算法,细分社区直到找不到统计上有意义的子社区,我们可以比以前的方法更有效地检测现实网络中的层次结构。

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