86 research outputs found
Inference of Edge Correlations in Multilayer Networks
Many recent developments in network analysis have focused on multilayer
networks, which one can use to encode time-dependent interactions, multiple
types of interactions, and other complications that arise in complex systems.
Like their monolayer counterparts, multilayer networks in applications often
have mesoscale features, such as community structure. A prominent type of
method for inferring such structures is the employment of multilayer stochastic
block models (SBMs). A common (but {potentially} inadequate) assumption of
these models is the sampling of edges in different layers independently,
conditioned on the community labels of the nodes. In this paper, we relax this
assumption of independence by incorporating edge correlations into an SBM-like
model. We derive maximum-likelihood estimates of the key parameters of our
model, and we propose a measure of layer correlation that reflects the
similarity between connectivity patterns in different layers. Finally, we
explain how to use correlated models for edge "prediction" (i.e., inference) in
multilayer networks. By taking into account edge correlations, prediction
accuracy improves both in synthetic networks and in a temporal network of
shoppers who are connected to previously-purchased grocery products
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