Inferring Community Members in Social Networks by Closeness Centrality Examination

Jie Zhang, Xuerui Ma, Weihao Liu, Yong Bai
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引用次数: 10

Abstract

It is important task to discover communities or hidden groups by analyzing the messages collected in social networks. For the case when some members of a community are known, a proper method is still necessary to infer the remaining community members. To address such an issue, we develop a closeness centrality examination algorithm to obtain the remaining community members with some known community members. In the proposed model, the message connections among all social network members is captured by a weighted graph model where the edges are assigned with weights derived from the sensitivity of topics contained in the messages by text analysis. In addition, the nodes of known community members form a central sub tree in the weighted graph model. The suspicious priority list of possible community members is obtained by calculating a closeness centrality score to the central sub tree. With the priority list, the remaining community members can be determined using cluster analysis and outlier analysis. The proposed method is validated with experiments.
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通过亲近中心性检验推断社会网络中的社区成员
通过分析社交网络中收集的信息来发现社区或隐藏的群体是一项重要的任务。对于已知某些社区成员的情况,仍然需要一种适当的方法来推断剩余的社区成员。为了解决这一问题,我们开发了一种接近中心性检查算法,以获得具有一些已知社区成员的剩余社区成员。在提出的模型中,所有社会网络成员之间的消息连接由加权图模型捕获,其中边缘由文本分析中包含的主题敏感性获得的权重分配。此外,在加权图模型中,已知社区成员的节点构成中心子树。通过计算与中心子树的接近度得分,获得可能社区成员的可疑优先级列表。有了优先级列表,可以使用聚类分析和离群值分析来确定剩余的社区成员。实验验证了该方法的有效性。
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