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Cluster-group based trusted computing for mobile social networks using implicit social behavioral graph
Affiliation:1. Departamento de Informática de Sistemas y Computadores, Universitat Politècnica de València, Spain;2. BCAM-Basque Center for Applied Mathematics, Spain;3. Instituto Universitario de Matemática Pura y Aplicada, Universitat Politècnica de València, Spain
Abstract:Mobile Social Networks (MSNs) facilitate connections between mobile devices, and are capable of providing an effective mobile computing environment for users to access, share, and distribute information. However, MSNs are virtual social spaces, the available information may not be trustworthy to all. Therefore, trust inference plays a critical role for establishing social links between mobile users. In MSNs, users’ transactions will more and more be complemented with group contact. Hence, future usage patterns of mobile devices will involve more group contacts. In this paper, we describe the implicit social behavioral graph, i.e., ego-i graph which is formed by users’ contacts, and present an algorithm for initiating ego-i graph. We rate these relationships to form a dynamic contact rank, which enables users to evaluate the trust values between users within the context of MSNs. We, then, calculate group-based trust values according to the level of contacts, interaction evolution, and users’ attributes. Based on group-based trust, we obtain a cluster trust by the aggregation of inter group-based trust values. Due to the unique nature of MSNs, we discuss the propagation of cluster trust values for global MSNs. Finally, we evaluate the performance of our trust model through simulations, and the results demonstrate the effectiveness of group-based behavioural relationships in MSNs’ information sharing system.
Keywords:Cluster-group trust  Contact  Mobile social networks  Implicit social behavioral graph
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