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Main Authors: Brabant, Victor, Bonifati, Angela, Cazabet, Remy
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.24450
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author Brabant, Victor
Bonifati, Angela
Cazabet, Remy
author_facet Brabant, Victor
Bonifati, Angela
Cazabet, Remy
contents Detecting communities in networks is essential for understanding the mesoscopic organization of complex systems. Interactions in most real-world networks evolve over time and exhibit diverse modalities: instantaneous events, continuous contacts that persist over intervals, and delayed interactions where source and destination are temporally separated, as observed in transportation processes. Additionally, interactions may be directed, weighted, or involve multiple node types. Existing methods for community detection in temporal networks typically handle only limited subsets of these features. When applied to real-world data, they often rely on simplifying transformations, such as aggregating interactions into time windows, projecting multipartite structures onto unipartite graphs, or ignoring edge directions and weights, leading to a loss of information. In this work, we generalize Longitudinal Modularity (L-Modularity) and the LAGO algorithm into a unified framework for dynamic community detection in complex link streams. Experiments on three real-world datasets demonstrate that our approach discovers meaningful communities in temporal networks with diverse interaction types.
format Preprint
id arxiv_https___arxiv_org_abs_2605_24450
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Generalized L-Modularity for Community Detection Beyond Simple Temporal Networks
Brabant, Victor
Bonifati, Angela
Cazabet, Remy
Social and Information Networks
Detecting communities in networks is essential for understanding the mesoscopic organization of complex systems. Interactions in most real-world networks evolve over time and exhibit diverse modalities: instantaneous events, continuous contacts that persist over intervals, and delayed interactions where source and destination are temporally separated, as observed in transportation processes. Additionally, interactions may be directed, weighted, or involve multiple node types. Existing methods for community detection in temporal networks typically handle only limited subsets of these features. When applied to real-world data, they often rely on simplifying transformations, such as aggregating interactions into time windows, projecting multipartite structures onto unipartite graphs, or ignoring edge directions and weights, leading to a loss of information. In this work, we generalize Longitudinal Modularity (L-Modularity) and the LAGO algorithm into a unified framework for dynamic community detection in complex link streams. Experiments on three real-world datasets demonstrate that our approach discovers meaningful communities in temporal networks with diverse interaction types.
title Generalized L-Modularity for Community Detection Beyond Simple Temporal Networks
topic Social and Information Networks
url https://arxiv.org/abs/2605.24450