Generative models for two-ground-truth partitions in networks
Lena Mangold, Camille Roth

TL;DR
This paper introduces a generative model for networks with two ground-truth partitions, assesses the ability of stochastic block models to detect coexisting structures, and highlights the importance of analyzing multiple partitions for understanding network mesoscale complexity.
Contribution
The paper proposes the stochastic cross-block model (SCBM) for creating networks with two embedded partitions and evaluates how well stochastic block models detect coexisting mesoscale structures.
Findings
Detection of coexisting partitions varies by SBM variant.
Coexistence of both partitions is rarely recovered.
Usually only one dominant structure is detected.
Abstract
A myriad of approaches have been proposed to characterise the mesoscale structure of networks - most often as a partition based on patterns variously called communities, blocks, or clusters. Clearly, distinct methods designed to detect different types of patterns may provide a variety of answers to the network's mesoscale structure. Yet, even multiple runs of a given method can sometimes yield diverse and conflicting results, producing entire landscapes of partitions which potentially include multiple (locally optimal) mesoscale explanations of the network. Such ambiguity motivates a closer look at the ability of these methods to find multiple qualitatively different 'ground truth' partitions in a network. Here, we propose the stochastic cross-block model (SCBM), a generative model which allows for two distinct partitions to be built into the mesoscale structure of a single benchmark…
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Taxonomy
TopicsComplex Network Analysis Techniques · Data Visualization and Analytics · Mental Health Research Topics
