In this article, we focus on the community detection problem in multiplex networks, that is, networks with multiple layers having the same node sets and no inter-layer connections. In particular, we look for groups of nodes that can be recognized as communities consistently across the layers. To this end, we propose a new approach that generalizes the Louvain method by (a) simultaneously updating the average and variance of the modularity scores across the layers and (b) reformulating the greedy search procedure in terms of a filter-based multiobjective optimization scheme. Unlike many previous modularity maximization strategies, which rely on some form of aggregation of the various layers, our multiobjective approach aims at maximizing the individual modularities on each layer simultaneously. We report experiments on synthetic and real-world networks, showing the effectiveness and the robustness of the proposed strategies both in the informative case, where all layers show the same community structure, and in the noisy case, where some layers represent only noise.

A variance-Aware multiobjective Louvain-like method for community detection in multiplex networks

Venturini Sara;Cristofari Andrea;Rinaldi Francesco;
2022

Abstract

In this article, we focus on the community detection problem in multiplex networks, that is, networks with multiple layers having the same node sets and no inter-layer connections. In particular, we look for groups of nodes that can be recognized as communities consistently across the layers. To this end, we propose a new approach that generalizes the Louvain method by (a) simultaneously updating the average and variance of the modularity scores across the layers and (b) reformulating the greedy search procedure in terms of a filter-based multiobjective optimization scheme. Unlike many previous modularity maximization strategies, which rely on some form of aggregation of the various layers, our multiobjective approach aims at maximizing the individual modularities on each layer simultaneously. We report experiments on synthetic and real-world networks, showing the effectiveness and the robustness of the proposed strategies both in the informative case, where all layers show the same community structure, and in the noisy case, where some layers represent only noise.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3499708
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