The emergence and the global adaptation of mobile devices has influenced human interactions at the individual, community, and social levels leading to the so called Cyber- Physical World (CPW) convergence scenario [1]. One of the most important features of CPW is the possibility of exploiting infor- mation about the structure of the social communities of users, revealed by joint movement patterns and frequency of physical co-location. Mobile devices of users that belong to the same social community are likely to ”see” each other (and thus be able to communicate through ad-hoc networking techniques) more frequently and regularly than devices outside the community. In mobile opportunistic networks, this fact can be exploited, for example, to optimize networking operations such as forwarding and dissemination of messages. In this paper we present the application of a cognitive-inspired algorithm [2, 3, 4] for revealing the structure of these dynamic social networks (simulated by the HCMM model [5]) using information about physical encounters logged by the users’ mobile devices. The main features of our algorithm are: (i) the capacity of detecting social communities induced by physical co-location of users through distributed algorithms; (ii) the capacity to detect users belonging to more communities (thus acting as bridges across them), and (iii) the capacity to detect the time evolution of communities.

Application of a Cognitive-Inspired Algorithm for Detecting Communities in Mobility Networks / Massaro, Emanuele; Guazzini, Andrea; Valerio, Lorenzo; Passerella, Andrea; Bagnoli, Franco. - STAMPA. - (2013), pp. 541-546. (Intervento presentato al convegno e Third IEEE International Conference on Cloud and Green Computing 2013 (CGC 2013) tenutosi a Karlsruhe, Germany nel 30 Sept.–2 Oct. 2013) [10.1109/CGC.2013.91].

Application of a Cognitive-Inspired Algorithm for Detecting Communities in Mobility Networks

MASSARO, EMANUELE;GUAZZINI, ANDREA;BAGNOLI, FRANCO
2013

Abstract

The emergence and the global adaptation of mobile devices has influenced human interactions at the individual, community, and social levels leading to the so called Cyber- Physical World (CPW) convergence scenario [1]. One of the most important features of CPW is the possibility of exploiting infor- mation about the structure of the social communities of users, revealed by joint movement patterns and frequency of physical co-location. Mobile devices of users that belong to the same social community are likely to ”see” each other (and thus be able to communicate through ad-hoc networking techniques) more frequently and regularly than devices outside the community. In mobile opportunistic networks, this fact can be exploited, for example, to optimize networking operations such as forwarding and dissemination of messages. In this paper we present the application of a cognitive-inspired algorithm [2, 3, 4] for revealing the structure of these dynamic social networks (simulated by the HCMM model [5]) using information about physical encounters logged by the users’ mobile devices. The main features of our algorithm are: (i) the capacity of detecting social communities induced by physical co-location of users through distributed algorithms; (ii) the capacity to detect users belonging to more communities (thus acting as bridges across them), and (iii) the capacity to detect the time evolution of communities.
2013
2013 International Conference on Cloud and Green Computing
e Third IEEE International Conference on Cloud and Green Computing 2013 (CGC 2013)
Karlsruhe, Germany
30 Sept.–2 Oct. 2013
Massaro, Emanuele; Guazzini, Andrea; Valerio, Lorenzo; Passerella, Andrea; Bagnoli, Franco
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/868970
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