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Multilayer
networks are a useful data structure for simultaneously capturing
multiple types of relationships between a set of nodes. In such
networks, each relational definition gives rise to a layer. While each
layer provides its own set of information, community structure across
layers can be collectively utilized to discover and quantify underlying
relational patterns between nodes. To concisely extract information from
a multilayer network, we propose to identify and combine sets of layers
with meaningful similarities in community structure. In this paper, we
describe the “strata multilayer stochastic block model” (sMLSBM), a
probabilistic model for multilayer community structure. The central
extension of the model is that there exist groups of layers, called
“strata”, which are defined such that all layers in a given stratum have
community structure described by a common stochastic block model (SBM).
That is, layers in a stratum exhibit similar node-to-community
assignments and SBM probability parameters. Fitting the sMLSBM to a
multilayer network provides a joint clustering that yields
node-to-community and layer-to-stratum assignments, which cooperatively
aid one another during inference. We describe an algorithm for
separating layers into their appropriate strata and an inference
technique for estimating the SBM parameters for each stratum. We
demonstrate our method using synthetic networks and a multilayer network
inferred from data collected in the Human Microbiome Project.
10.13039/100000071-National Institute of Child Health & Human Development; 10.13039/100000002-National Institutes of Health; James S. McDonnell Foundation 21st Century Science Initiative Complex Systems Scholar; 10.13039/100000002-National Institutes of Health; 10.13039/100006808-UNC Lineberger Comprehensive Cancer Center; University Cancer Research Fund