A mixture model approach for clustering bipartite networks

05/07/2019
by   Isabella Gollini, et al.
0

This paper investigates the latent structure of bipartite networks via a model-based clustering approach which is able to capture both latent groups of sending nodes and latent trait variability of propensity of sending nodes to create links with receiving nodes within each group. This modelling approach is very flexible and can be estimated by using fast inferential approaches such as variational inference. We apply this model to the analysis of a terrorist network in order to identify the main latent groups of the actors and their latent positions based on their attendance to some events.

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