Stochastic Block Models with Multiple Continuous Attributes
Natalie Stanley, Thomas Bonacci, Roland Kwitt, Marc Niethammer, Peter, J. Mucha

TL;DR
This paper introduces a novel stochastic block model that incorporates multiple continuous node attributes, modeled as Gaussian, to improve community detection, link prediction, and collaborative filtering in networks.
Contribution
It is the first augmented SBM to handle multiple continuous attributes, enhancing community detection with attribute data alongside connectivity.
Findings
Effective in biological data for community detection.
Improves link prediction accuracy.
Enhances collaborative filtering performance.
Abstract
The stochastic block model (SBM) is a probabilistic model for community structure in networks. Typically, only the adjacency matrix is used to perform SBM parameter inference. In this paper, we consider circumstances in which nodes have an associated vector of continuous attributes that are also used to learn the node-to-community assignments and corresponding SBM parameters. While this assumption is not realistic for every application, our model assumes that the attributes associated with the nodes in a network's community can be described by a common multivariate Gaussian model. In this augmented, attributed SBM, the objective is to simultaneously learn the SBM connectivity probabilities with the multivariate Gaussian parameters describing each community. While there are recent examples in the literature that combine connectivity and attribute information to inform community…
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Taxonomy
TopicsComplex Network Analysis Techniques · Functional Brain Connectivity Studies · Bioinformatics and Genomic Networks
