Finding community structure in networks using the eigenvectors of matrices
University of Michigan–Ann Arbor
Indexed inarxivcrossrefpubmed
Abstract
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…
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Topics
Keywords
- Bipartite graph
- Centrality
- Eigenvalues and eigenvectors
- Community structure
- Laplacian matrix
- Maximization
- Clique percolation method
- Modularity (biology)
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