Detecting the community structure and activity patterns of temporal networks: a non-negative tensor factorization approach
Laetitia Gauvin, Andr\'e Panisson, Ciro Cattuto

TL;DR
This paper presents a non-negative tensor factorization method to detect community structures and activity patterns in temporal networks, effectively capturing dynamic mesoscopic features and validating results with real-world social interaction data.
Contribution
It introduces a novel application of non-negative tensor factorization to temporal networks, enabling simultaneous community detection and activity tracking over time.
Findings
Successfully recovers known community structures in social networks.
Accurately tracks temporal activity patterns of communities.
Demonstrates high accuracy in real-world data validation.
Abstract
The increasing availability of temporal network data is calling for more research on extracting and characterizing mesoscopic structures in temporal networks and on relating such structure to specific functions or properties of the system. An outstanding challenge is the extension of the results achieved for static networks to time-varying networks, where the topological structure of the system and the temporal activity patterns of its components are intertwined. Here we investigate the use of a latent factor decomposition technique, non-negative tensor factorization, to extract the community-activity structure of temporal networks. The method is intrinsically temporal and allows to simultaneously identify communities and to track their activity over time. We represent the time-varying adjacency matrix of a temporal network as a three-way tensor and approximate this tensor as a sum of…
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