Community Aware Temporal Network Generation
Nicol\`o Alessandro Girardini, Antonio Longa, Gaia Trebucchi, Giulia Cencetti, Andrea Passerini, Bruno Lepri

TL;DR
This paper introduces a novel method for generating synthetic temporal face-to-face interaction networks that preserve community structures and dynamics, addressing limitations of existing datasets and static network models.
Contribution
It extends a recent network generation approach to incorporate community labels, enabling realistic simulation of community evolution in temporal networks.
Findings
Generated networks closely match original structural measures
Method effectively captures community interaction dynamics
Applicable to multiple face-to-face interaction datasets
Abstract
The advantages of temporal networks in capturing complex dynamics, such as diffusion and contagion, has led to breakthroughs in real world systems across numerous fields. In the case of human behavior, face-to-face interaction networks enable us to understand the dynamics of how communities emerge and evolve in time through the interactions, which is crucial in fields like epidemics, sociological studies and urban science. However, state-of-the-art datasets suffer from a number of drawbacks, such as short time-span for data collection and a small number of participants. Moreover, concerns arise for the participants' privacy and the data collection costs. Over the past years, many successful algorithms for static networks generation have been proposed, but they often do not tackle the social structure of interactions or their temporal aspect. In this work, we extend a recent network…
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