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We propose and study a set of algorithms for discovering community structure in networks-natural divisions of network nodes into densely connected subgroups. Our algorithms all share two definitive features: first, they involve iterative removal of edges from the network to split it into communities, the edges removed being identified using any one of a number of possible "betweenness" measures, and second, these measures are, crucially, recalculated after each removal. We also propose a measure for the strength of the community structure found by our algorithms, which gives us an objective metric for choosing the number of communities into which a network should be divided. We demonstrate that our algorithms are highly effective at discovering community structure in both computer-generated and real-world network data, and show how they can be used to shed light on the sometimes dauntingly complex structure of networked systems.
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Michelle G. Newman
Michelle Girvan
Physical Review E
University of Michigan
Cornell University
Santa Fe Institute
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Newman et al. (Thu,) studied this question.
www.synapsesocial.com/papers/69d7225b8a0e2c5879bef600 — DOI: https://doi.org/10.1103/physreve.69.026113