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Modeling Network Populations via Graph Distances

Simón Lunagómez, Sofia C. Olhede, Patrick J. Wolfe

2020Lancaster EPrints (Lancaster University)28 citationsOpen Access PDF

Abstract

This article introduces a new class of models for multiple networks. The core idea is to parametrize a distribution on labelled graphs in terms of a Fréchet mean graph (which depends on a user-specified choice of metric or graph distance) and a parameter that controls the concentration of this distribution about its mean. Entropy is the natural parameter for such control, varying from a point mass concentrated on the Fréchet mean itself to a uniform distribution over all graphs on a given vertex set. We provide a hierarchical Bayesian approach for exploiting this construction, along with straightforward strategies for sampling from the resultant posterior distribution. We conclude by demonstrating the efficacy of our approach via simulation studies and two multiple-network data analysis examples: one drawn from systems biology and the other from neuroscience

Topics & Concepts

Computer sciencePrinciple of maximum entropyGraphTheoretical computer scienceBayesian probabilityMathematicsArtificial intelligenceComplex Network Analysis TechniquesBioinformatics and Genomic NetworksBayesian Modeling and Causal Inference
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