Latent heterogeneous multilayer community detection

Ali, Hafiz Tiomoko, Liu, Sijia, Yilmaz, Yasin, Hero, Alfred, Couillet, Romain, Rajapakse, Indika

arXiv.org Machine Learning 

We propose a method for simultaneously detecting shared and unshared communities in heterogeneous multilayer weighted and undirected networks. The multilayer network is assumed to follow a generative probabilistic model that takes into account the similarities and dissimilarities between the communities. We make use of a variational Bayes approach for jointly inferring the shared and unshared hidden communities from multilayer network observations. We show the robustness of our approach compared to state-of-the art algorithms in detecting disparate (shared and private) communities on synthetic data as well as on real genome-wide fibroblast proliferation dataset.

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