机会主义网络中动态社会群体的自主检测

E. Borgia, M. Conti, A. Passarella
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引用次数: 23

摘要

在本文中,我们关注的是旨在发现机会主义网络中人们社区的方法。我们首先研究了文献[1]中提出的三种社区检测分布式算法的行为,在这种情况下,人们根据一种很好地再现了人类接触性质的流动性模型(即HCMM)移动[2]。通过仿真分析,我们表明,这些分布式方法可以令人满意地检测由人们组成的社区,只有当他们不随时间发生显着变化时。否则,由于它们永远维护所有遇到的节点的内存,这些算法无法捕捉用户所在的社会社区的动态演变。为此,我们提出了一种新的解决方案ADSIMPLE,它捕捉了社会社区的动态演变。我们证明,它可以准确地检测社区和社会变化,同时保持较低的计算和存储需求。
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Autonomic detection of dynamic social communities in Opportunistic Networks
In this paper we focus on approaches which aim at discovering communities of people in Opportunistic Networks. We first study the behaviour of three community detection distributed algorithms proposed in literature [1], in a scenario where people move according to a mobility model which well reproduces the nature of human contacts, namely HCMM [2]. By a simulation analysis, we show that these distributed approaches can satisfactory detect the communities formed by people only when they do not significantly change over time. Otherwise, as they maintain memory of all encountered nodes forever, these algorithms fail to capture dynamic evolutions of the social communities users are part of. To this aim we propose ADSIMPLE, a new solution which captures the dynamic evolution of social communities. We demonstrate that it accurately detects communities and social changes while keeping computation and storage requirements low.
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