一种新的基于距离中心性的社区检测算法

Longju Wu, Tian Bai, Zhe Wang, Limei Wang, Yu Hu, Jinchao Ji
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引用次数: 11

摘要

社区检测对于许多复杂的网络应用非常重要。一个主要的挑战在于,在一个给定的社交网络中,社区的数量通常是未知的。提出了一种新的社区检测算法——基于距离中心性的社区检测算法。该方法能够在不预设团体号的情况下检测网络的团体。该方法有两个组成部分。首先,我们通过计算每个节点的距离信息的中心性来选择初始中心节点。然后,我们测量网络中中心节点与其他节点之间的相似度,并将每个节点分配给最相似的社区。我们证明了基于距离中心性的社区检测算法终止于一个良好的社区数,并且与其他现有方法具有相当的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new Community Detection algorithm based on Distance Centrality
Community detection is important for many complex network applications. A major challenge lies in that the number of communities in a given social network is usually unknown. This paper presents a new community detection algorithm-Distance Centrality based Community Detection (DCCD). The proposed method is capable of detecting the community of network without a preset community number. The method has two components. First we choose the initial center nodes by calculating the centrality of each node using their distance information. Then we measure the similarity between the center nodes and each other nodes in the network, and assign each node to the most similar community. We demonstrate that the proposed distance centrality based community detection algorithm terminated on a good community number, and also has comparable detection accuracy with other existing approaches.
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