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Predicting temporal centrality in Opportunistic Mobile Social Networks based on social behavior of people
Authors:Huan Zhou  Linping Tong  Shouzhi Xu  Chungming Huang  Jialu Fan
Affiliation:1.College of Computer and Information Technology,China Three Gorges University,Yichang,China;2.Department of Computer Science and Information Engineering,National Cheng Kung University,Tainan,Taiwan;3.The State Key Laboratory of Synthetical Automation for Process Industries,Northeastern University,Shenyang,China
Abstract:Predicting the centrality of nodes is a significant problem for different applications in Opportunistic Mobile Social Networks (OMSNs). However, when calculating such metrics, current studies focused on analyzing static networks that do not change over time or using aggregated contact information over a period of time. Furthermore, the centrality measured in the past is not verified whether it is useful as a predictor for the future. In this paper, in order to capture the dynamic behavior of people, we focus on predicting nodes’ future centrality (importance) from the temporal perspective using real mobility traces in OMSNs. Three important centrality metrics, namely betweenness, closeness, and degree centrality, are considered. Through real trace-driven simulations, we find that nodes’ future centrality is highly predictable due to natural social behavior of people. Then, based on the observations in the simulation, we design several reasonable prediction methods to predict nodes’ future temporal centrality. Finally, extensive real trace-driven simulations are conducted to evaluate the performance of our proposed methods. The results show that the Recent Weighted Average Method performs best in the MIT Reality trace, and the recent Uniform Average Method performs best in the Infocom 06 trace. Furthermore, we also evaluate the impact of parameters m and w on the performance of the proposed methods and find proper values of different parameters for each proposed method at the same time.
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