A time-series approach to measuring node similarity in networks and its application to community detection |
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Authors: | Bo Yang Tao Huang Xu Li |
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Affiliation: | School of Automation, Wuhan University of Technology, Wuhan 430070, China |
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Abstract: | A central concept in network analysis is that of similarity between nodes. In this paper, we introduce a dynamic time-series approach to quantifying the similarity between nodes in networks. The problem of measuring node similarity is exquisitely embedded into the framework of time series for state evolution of nodes. We develop a deterministic parameter-free diffusion model to drive the dynamic evolution of node states, and produce a unique time series for each source node. Then we introduce a measure quantifying how far all the other nodes are located from each source one. Following this measure, a quantity called dissimilarity index is proposed to signify the extent of similarity between nodes. Thereof, our dissimilarity index gives a deep and natural integration between the local and global perspectives of topological structure of networks. Furthermore, we apply our dissimilarity index to unveil community structure in networks, which verifies the proposed dissimilarity index. |
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Keywords: | Corresponding author. Networks Node similarity Diffusion model Time series Community detection |
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