Affiliation:
1. School of Information Engineering, Chang’an University, Xi’an, China
2. Department of Computer Science, New Jersey Institute of Technology, Newark, NJ, USA
Abstract
Vehicular social networks are emerging hybrid networks that combine traditional vehicular networks and social networks, with two key types of nodes, that is, vehicles and drivers. Since vehicle behaviors are controlled or influenced by drivers, the trustworthiness of a vehicle node is essentially determined by its own communication behaviors and its driver’s social characteristics. Therefore, human factors should be considered in securing the communication in vehicular social networks. In this article, we propose a hybrid trust model that considers both communication trust and social trust. Within the proposed scheme, we first construct a communication trust model to quantify the trust value based on the interactions between vehicle nodes, and then develop a social trust model to measure the social trust based on the social characteristics of vehicle drivers. Based on these two trust models, we compute the combined trust assessment of a vehicle node in vehicular social networks. Extensive simulations show that the proposed hybrid trust model improves the accuracy in evaluating the trustworthiness of vehicle nodes and the efficiency of communication in vehicular social networks.
Funder
the Fundamental Research Funds for the Central Universities
the Funding of Selected Science and Technology Projects of Oversea Scholars from Shaanxi Province
the Shaanxi Provincial Key Scientific and Technological Project
Subject
Computer Networks and Communications,General Engineering
Reference44 articles.
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2. Novel Trust Framework for Vehicular Networks
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