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Improving Node Similarity for Discovering Community Structure in Complex Networks

机译:提高节点相似性以发现复杂网络中的社区结构

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Community detection is to detect groups consisting of densely connected nodes, and having sparse connections between them. Many researchers indicate that detecting community structures in complex networks can extract plenty of useful information, such as the structural features, network properties, and dynamic characteristics of the community. Several community detection methods introduced different similarity measures between nodes, and their performance can be improved. In this paper, we propose a community detection method based on an improvement of node similarities. Our method initializes a level for each node and assigns nodes into a community based on similarity between nodes. Then it selects core communities and expands those communities by layers. Finally, we merge communities and choose the best community in the network. The experimental results show that our method achieves state-of-the-art performance.
机译:社区检测是要检测由密集连接的节点组成的组,并且它们之间的连接稀疏。许多研究人员指出,检测复杂网络中的社区结构可以提取大量有用的信息,例如社区的结构特征,网络属性和动态特征。几种社区检测方法在节点之间引入了不同的相似性度量,可以提高其性能。在本文中,我们提出了一种基于节点相似度提高的社区检测方法。我们的方法为每个节点初始化一个级别,并根据节点之间的相似性将节点分配到社区中。然后,它选择核心社区并逐层扩展这些社区。最后,我们合并社区并在网络中选择最佳社区。实验结果表明,我们的方法达到了最先进的性能。

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