Effective Community Detection Algorithm Based on Edge Influence Weight

Chang Wang, Yan Yang
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Abstract

Connections strength between nodes are fundamental and important components in social networks, and connection strength determines the community structure of the network to a large extent. Edge weight is a meaningful representative of connection strength or data credibility, which can be applied to social network analysis. Aiming at the problems of insufficient research on the relationship between nodes and unreasonable initial selection of community centers, a community detection algorithm based on edge influence weight (CDP-EW) was proposed in this research. Specifically, to solve the initial community center selection problem, the degree centrality of nodes was used to calculate node influence. Then, the edge influence weight was redefined to calculate similarity based on the link relationships between nodes. Moreover, CDP-EW was compared with some community detection algorithms on real complex network datasets in experiments, where the proposed algorithm performed well on complex networks.
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基于边缘影响权的有效社区检测算法
节点之间的连接强度是社会网络的基础和重要组成部分,连接强度在很大程度上决定了网络的社区结构。边缘权重是连接强度或数据可信度的有意义的代表,可以应用于社会网络分析。针对节点间关系研究不足、社区中心初始选择不合理等问题,提出了一种基于边缘影响权的社区检测算法(CDP-EW)。具体来说,为了解决初始社区中心选择问题,采用节点的度中心性来计算节点的影响。然后,重新定义边缘影响权值,根据节点间的链接关系计算相似度;在实验中,将CDP-EW算法与一些真实复杂网络数据集上的社区检测算法进行了比较,结果表明该算法在复杂网络上表现良好。
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