Phys. Rev. E 74, 036104 (2006) [19 pages]Finding community structure in networks using the eigenvectors of matricesReceived 19 May 2006; published 11 September 2006 We consider the problem of detecting communities or modules in networks, groups of vertices with a higher-than-average density of edges connecting them. Previous work indicates that a robust approach to this problem is the maximization of the benefit function known as “modularity” over possible divisions of a network. Here we show that this maximization process can be written in terms of the eigenspectrum of a matrix we call the modularity matrix, which plays a role in community detection similar to that played by the graph Laplacian in graph partitioning calculations. This result leads us to a number of possible algorithms for detecting community structure, as well as several other results, including a spectral measure of bipartite structure in networks and a centrality measure that identifies vertices that occupy central positions within the communities to which they belong. The algorithms and measures proposed are illustrated with applications to a variety of real-world complex networks. © 2006 The American Physical Society URL:
http://link.aps.org/doi/10.1103/PhysRevE.74.036104
DOI:
10.1103/PhysRevE.74.036104
PACS:
89.75.Hc, 05.10.−a, 02.10.Ud, 87.23.Ge
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