Generalized Louvain method for community detection in large networks

P. D. Meo, Emilio Ferrara, G. Fiumara, A. Provetti
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引用次数: 291

Abstract

In this paper we present a novel strategy to discover the community structure of (possibly, large) networks. This approach is based on the well-know concept of network modularity optimization. To do so, our algorithm exploits a novel measure of edge centrality, based on the κ-paths. This technique allows to efficiently compute a edge ranking in large networks in near linear time. Once the centrality ranking is calculated, the algorithm computes the pairwise proximity between nodes of the network. Finally, it discovers the community structure adopting a strategy inspired by the well-known state-of-the-art Louvain method (henceforth, LM), efficiently maximizing the network modularity. The experiments we carried out show that our algorithm outperforms other techniques and slightly improves results of the original LM, providing reliable results. Another advantage is that its adoption is naturally extended even to unweighted networks, differently with respect to the LM.
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大型网络中社区检测的广义Louvain方法
在本文中,我们提出了一种新的策略来发现(可能是大的)网络的社区结构。这种方法基于众所周知的网络模块化优化概念。为此,我们的算法利用了一种基于κ-路径的边缘中心性的新度量。该技术允许在近线性时间内有效地计算大型网络中的边缘排序。一旦计算出中心性排序,该算法就会计算网络节点之间的成对接近度。最后,它发现社区结构采用了一种受著名的最先进的Louvain方法(以下简称LM)启发的策略,有效地最大化了网络的模块化。我们进行的实验表明,我们的算法优于其他技术,并略微改进了原始LM的结果,提供了可靠的结果。另一个优点是,它的采用甚至可以自然地扩展到未加权的网络,这与LM不同。
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