Testing for Association in Multi-View Network Data

2019 
In this paper, we consider data consisting of multiple networks, each comprised of a different edge set on a common set of nodes. Many models have been proposed for such multi-view data, assuming that the data views are closely related. In this paper, we provide tools for evaluating the assumption that there is a relationship between the different views. In particular, we ask: is there an association between the latent community memberships of the nodes within each data view? To answer this question, we extend the stochastic block model for a single network view to two network views, and develop a new hypothesis test for the null hypothesis that the latent community structure within each data view is independent. We apply our test to protein-protein interaction data sets from the HINT database (Das & Yu 2012). We find evidence of a weak association between the latent community structure of proteins defined with respect to binary interaction data and with respect to co-complex association data. We also extend this proposal to the setting of a network with node covariates.
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