Latouche, Pierre; Birmelé, Etienne; Ambroise, Christophe Overlapping stochastic block models with application to the French political blogosphere. (English) Zbl 1220.62083 Ann. Appl. Stat. 5, No. 1, 309-336 (2011). Summary: Complex systems in nature and in society are often represented as networks, describing the rich set of interactions between objects of interest. Many deterministic and probabilistic clustering methods have been developed to analyze such structures. Given a network, almost all of them partition the vertices into disjoint clusters, according to their connection profile. However, recent studies have shown that these techniques were too restrictive and that most of the existing networks contained overlapping clusters. To tackle this issue, we present in this paper the overlapping stochastic block model. Our approach allows the vertices to belong to multiple clusters, and, to some extent, generalizes the well-known stochastic block model [K. Nowicki and T. A. B. Snijders, J. Am. Stat. Assoc. 96, No. 455, 1077–1087 (2001; Zbl 1072.62542)]. We show that the model is generically identifiable within classes of equivalence and we propose an approximate inference procedure, based on global and local variational techniques. Using toy data sets as well as the French Political Blogosphere network and the transcriptional network of Saccharomyces cerevisiae, we compare our work with other approaches. Cited in 1 ReviewCited in 43 Documents MSC: 62H30 Classification and discrimination; cluster analysis (statistical aspects) 90B18 Communication networks in operations research 05C80 Random graphs (graph-theoretic aspects) Keywords:random graph models; blockmodels; overlapping clusters; global and local variational techniques Citations:Zbl 1072.62542 Software:StOCNET; latentnet; GOToolBox; LBFGS-B × Cite Format Result Cite Review PDF Full Text: DOI arXiv References: [1] Airoldi, E., Blei, D., Xing, E. and Fienberg, S. (2006). 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