Temporal Networks Based on Human Mobility Models: A Comparative Analysis With Real-World Networks

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TitreTemporal Networks Based on Human Mobility Models: A Comparative Analysis With Real-World Networks
Type de publicationJournal Article
Year of Publication2022
AuteursMboup D, Diallo C, Cherifi H
JournalIEEE ACCESS
Volume10
Pagination5912-5935
Type of ArticleArticle
ISSN2169-3536
Mots-clésAnalytical models, Computational modeling, contact networks, Data models, Global Positioning System, human dynamics, human mobility networks, proximity networks, robustness, Temporal networks, time varying graphs, trajectory, wireless communication
Résumé

Mobility is a critical element for understanding human contact networks. In many studies, the researchers use random processes to model human mobility. However, people do not move randomly in their environment. Their interactions do not depend only on spatial constraints but on their temporal, social, economic, and cultural activities. The topological structure of the physical and/or proximity contact networks depends, therefore, entirely on the mobility patterns. This paper performs an extensive comparative analysis of real-world temporal contact networks and synthetic networks based on influential mobility models. Results show that the various topological properties of most of the synthetic datasets depart from those observed in real-world contact networks because the randomness of some mobility parameters tends to move away from human contact properties. However, it appears that data generated using Spatio-Temporal Parametric Stepping (STEPS) mobility model reveals similarities with real temporal contact networks such as heavy-tailed distribution of contact duration, frequency of pairs of contacts, and the bursty phenomenon. These results pave the way for further improvement of mobility models to generate meaningful artificial contact networks.

DOI10.1109/ACCESS.2021.3140136