Extending a configuration model to find communities in complex networks

نویسندگان

  • Di Jin
  • Dongxiao He
  • Qinghua Hu
  • Carlos Baquero
  • Bo Yang
چکیده

Discovery of communities in complex networks is a fundamental data analysis task in various domains. Generative models are a promising class of techniques for identifying modular properties from networks, which has been actively discussed recently. However, most of them cannot preserve the degree sequence of networks, which will distort the community detection results. Rather than using a blockmodel as most current works do, here we generalize a configuration model, namely, a null model of modularity, to solve this problem. Towards decomposing and combining sub-graphs according to the soft community memberships, our model incorporates the ability to describe community structures, something the original model does not have. Also, it has the property, as with the original model, that it fixes the expected degree sequence to be the same as that of the observed network. We combine both the community property and degree sequence preserving into a single unified model, which gives better community results compared with other models. Thereafter, we learn the model using a technique of nonnegative matrix factorization and 6 Author to whom any correspondence should be addressed. c © 2013 IOP Publishing Ltd and SISSA Medialab srl 1742-5468/13/P09013+17$33.00 .S tt.M ech(2013) P 0013 Extending a configuration model to find communities in complex networks determine the number of communities by applying consensus clustering. We test this approach both on synthetic benchmarks and on real-world networks, and compare it with two similar methods. The experimental results demonstrate the superior performance of our method over competing methods in detecting both disjoint and overlapping communities.

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تاریخ انتشار 2013