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Statistical classification of social networks

机译:社交网络的统计分类

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摘要

This paper proposes a new social network classification method by comparing statistics of their centralities and clustering coefficients. Specifically, the proposed method uses the statistics of Degree Centralities and clustering coefficients of networks as a classification criterion. A theoretical justification to this method is also given. In relation to the widely held belief that a social network graph is solely defined by its degree distribution, the novelty of this paper consists in revealing the strong dependence of social networks on Degree Centralities and clustering coefficients, and in using them as minimal information to classify social networks. In addition, experimental classification demonstrates a very good performance of the proposed method on real social network data, and validates the hypothesis that Degree Centralities and clustering coefficients are the only two viable independent properties of a social network.
机译:通过比较其中心统计和聚类系数,提出了一种新的社交网络分类方法。具体地,该方法使用度中心度的统计和网络的聚类系数作为分类标准。还给出了该方法的理论依据。关于普遍认为社会网络图仅由其度数分布定义的信念,本文的新颖之处在于揭示了社会网络对度中心性和聚类系数的强烈依赖性,并将它们用作最小信息进行分类社交网络。此外,实验分类证明了该方法在真实社交网络数据上的良好性能,并验证了度中心度和聚类系数是社交网络仅有的两个独立属性的假设。

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