Learning common structures in a collection of networks. An application to food webs
Saint-Clair Chabert-Liddell, Pierre Barbillon, Sophie Donnet

TL;DR
This paper introduces a probabilistic model extension of the Stochastic Block Model to identify common structures and cluster networks based on their topological similarities, demonstrated on ecological food webs.
Contribution
It presents a novel extension of SBM for multiple networks, enabling joint modeling, clustering, and assessment of structural homogeneity among ecological networks.
Findings
Identified ecological roles through network structure analysis.
Clustered 67 food webs into five distinct structural groups.
Revealed homogeneity and ecological correspondences in food webs.
Abstract
Let a collection of networks represent interactions within several (social or ecological) systems. We pursue two objectives: identifying similarities in the topological structures that are held in common between the networks and clustering the collection into sub-collections of structurally homogeneous networks. We tackle these two questions with a probabilistic model based approach. We propose an extension of the Stochastic Block Model (SBM) adapted to the joint modeling of a collection of networks. The networks in the collection are assumed to be independent realizations of SBMs. The common connectivity structure is imposed through the equality of some parameters. The model parameters are estimated with a variational Expectation-Maximization (EM) algorithm. We derive an ad-hoc penalized likelihood criterion to select the number of blocks and to assess the adequacy of the consensus…
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Taxonomy
TopicsPlant and animal studies · Evolutionary Game Theory and Cooperation · Ecology and Vegetation Dynamics Studies
