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Extracting Local Community Structure from Local Cores

Release Time:2019-03-11  Hits:

Indexed by: Conference Paper

Date of Publication: 2011-04-22

Included Journals: Scopus、CPCI-S、EI

Volume: 6637

Page Number: 287-298

Key Words: Community structure; Local modularity; Local core

Abstract: To identify global community structure in networks is a great challenge that requires complete information of graphs, which is not feasible for some large networks, e.g. the World Wide Web. Recently, local algorithms have been proposed to extract communities in nearly linear time, which just require a small part of the graphs. However, their results, largely depending on the starting vertex, are not stable. In this paper, we propose a local modularity method for extracting local communities from local cores instead of random vertices. This approach firstly extracts a large enough local core with a heuristic strategy. Then, it detects the corresponding local community by optimizing local modularity, and finally removes outliers based on introversion. Experiment results indicate that, compared with previous algorithms, our method can extract stable meaningful communities with higher quality.

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