签名网络中基于节点相似度的社区检测算法

Zhi Bie, Lufeng Qian, J. Ren
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引用次数: 1

摘要

基于节点相似度的分层聚类算法已广泛应用于社区检测,但并不适用于签名网络。典型的签名网络社区检测算法存在不同节点的社区分割率低的问题。基于节点的相似度,提出了CDNS算法(基于节点相似度的签名网络社区检测算法)。首先,该算法提出了一种适用于签名网络的节点影响测度,作为选择社区初始节点的依据;其次,提出了基于特征向量中心性的节点相似度计算方法,并从相邻节点中选取初始节点中相似度最高的节点组成初始社区;最后,根据邻居节点的社区贡献,算法确定邻居节点是否加入社区,以及邻居节点加入社区的顺序。真实签名网络和模拟签名网络的实验证明了CDNS算法具有良好的准确性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Community Detection Algorithm based on Node Similarity in Signed Networks
Hierarchical clustering algorithms based on node similarity have been widely used in community detection, but it is not suitable for signed networks. The typical signed network community detection algorithm has the problem of low community division rate from different nodes. Based on the similarity of nodes, this paper proposes the CDNS algorithm (Community Detection Algorithm based on Node Similarity in Signed Networks). Firstly, the algorithm proposes a node influence measure suitable for signed networks as the basis for selecting the initial node of the community. Secondly, it proposes the calculation of the node similarity based on the eigenvector centrality, and selects the node with the highest similarity from the initial node from the neighbour nodes to form the initial community. Finally, according to the community contribution of neighbour nodes, algorithm determines whether the neighbour nodes are joined in the community and in which order the neighbour nodes are joined in the community. The experiments of real signed network and simulated signed network prove that the CDNS algorithm has good accuracy and efficiency.
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