Community detection in complex networks by density-based clustering |
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Authors: | Hong Jin Shuliang Wang Chenyang Li |
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Affiliation: | 1. State Key Laboratory of Software Engineering, Wuhan University, China;2. International School of Software, Wuhan University, China;3. School of Software, Beijing Institute of Technology, China |
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Abstract: | We proposed a method to find the community structure in a complex network by density-based clustering. Physical topological distance is introduced in density-based clustering for determining a distance function of specific influence functions. According to the distribution of the data, the community structures are uncovered. The method keeps a better connection mode of the community structure than the existing algorithms in terms of modularity, which can be viewed as a basic characteristic of community detection in the future. Moreover, experimental results indicate that the proposed method is efficient and effective to be used for community detection of medium and large networks. |
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Keywords: | Physical topological distance Density-based clustering Community detection |
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