Model-based clustering of multiple networks with a hierarchical algorithm
Tabea Rebafka (LPSM (UMR\_8001), MaIAGE)

TL;DR
This paper introduces a hierarchical, model-based clustering method for multiple networks with varying vertices, using stochastic block models and graphon comparisons to identify similar network groups efficiently.
Contribution
It proposes a novel hierarchical agglomerative algorithm for clustering multiple networks based on stochastic block models and an automated Bayesian model selection approach.
Findings
Effective clustering of synthetic networks demonstrated.
Application to ecological networks shows interpretability.
Algorithm efficiently handles label-switching issues.
Abstract
The paper tackles the problem of clustering multiple networks, directed or not, that do not share the same set of vertices, into groups of networks with similar topology. A statistical model-based approach based on a finite mixture of stochastic block models is proposed. A clustering is obtained by maximizing the integrated classification likelihood criterion. This is done by a hierarchical agglomerative algorithm, that starts from singleton clusters and successively merges clusters of networks. As such, a sequence of nested clusterings is computed that can be represented by a dendrogram providing valuable insights on the collection of networks. Using a Bayesian framework, model selection is performed in an automated way since the algorithm stops when the best number of clusters is attained. The algorithm is computationally efficient, when carefully implemented. The aggregation of…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Complex Network Analysis Techniques · Advanced Clustering Algorithms Research
