Uncovering space-independent communities in spatial networks

P Expert, T Evans, Vincent Blondel, Renaud Lambiotte

    Résultats de recherche: Contribution à un journal/une revueArticle

    Résumé

    Many complex systems are organized in the form of a network embedded in space. Important examples include the physical Internet infrastucture, road networks, flight connections, brain functional networks, and social networks. The effect of space on network topology has recently come under the spotlight because of the emergence of pervasive technologies based on geolocalization, which constantly fill databases with people’s movements and thus reveal their trajectories and spatial behavior. Extracting patterns and regularities from the resulting massive amount of human mobility data requires the development of appropriate tools for uncovering information in spatially embedded networks. In contrast with most works that tend to apply standard network metrics to any type of network, we argue in this paper for a careful treatment of the constraints imposed by space on network topology. In particular, we focus on the problem of community detection and propose a modularity function adapted to spatial networks. We show that it is possible to factor out the effect of space in order to reveal more clearly hidden structural similarities between the nodes. Methods are tested on a large mobile phone network and computer-generated benchmarks where the effect of space has been incorporated.
    langue originaleAnglais
    Pages (de - à)7663-7668
    Nombre de pages6
    journalProceedings of the National Academy of Sciences of the United States of America
    Volume108
    Numéro de publication19
    Les DOIs
    Etat de la publicationPublié - 2011

    Empreinte digitale

    Examiner les sujets de recherche de « Uncovering space-independent communities in spatial networks ». Ensemble, ils forment une empreinte digitale unique.

    Contient cette citation