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Compressive Sensing over Graphs Based Inter-Community Detection Scheme in Mobile Social Networks

机译:移动社会网络中基于图的压缩感知社区间检测方案

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Recently, mobile social networks (MSNs) has been playing an increasingly large proportion in people's daily life, and consequently attracted enormous amount of researches in this area, including network data collection, user behavior analysis and so on. Many of them are based on the community structure of the MSNs, the detection of which has attracted academic attention. In this paper, we propose an inter-community detection scheme under the framework of the emerging compressive sensing (CS) over graphs. Firstly, we extract the social structure among users by calculating the probability of two users encountering with each other. Then, the proposed scheme utilizes the encounter probability and the edge-clustering coefficient to define a novel additive property to make the CS algorithm applicable. Simulation results demonstrate that the proposed detection scheme can detect inter- community links more accurately than the conventional random walk based method.
机译:近年来,移动社交网络(MSN)在人们的日常生活中所占的比重越来越大,因此吸引了该领域的大量研究,包括网络数据收集,用户行为分析等。其中许多是基于MSN的社区结构,其检测引起了学术上的关注。在本文中,我们提出了基于图的新兴压缩感知(CS)框架下的社区间检测方案。首先,我们通过计算两个用户彼此相遇的概率来提取用户之间的社会结构。然后,所提出的方案利用遭遇概率和边缘聚类系数来定义新颖的加性,以使CS算法适用。仿真结果表明,与传统的基于随机游走的方法相比,所提出的检测方案能够更准确地检测社区之间的链接。

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