Overlapping community detection in complex networks using multi-objective evolutionary algorithm

被引:0
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作者
Zhao Yuxin
Li Shenghong
Jin Feng
机构
[1] Shanghai Jiao Tong University,Department of Electronic Engineering
[2] IBM China Research Laboratory,undefined
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关键词
Complex network; Community detection; Overlapping community structure; Optimization problem; Multi-objective evolutionary algorithm; 50C25; 90C29;
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摘要
Community structure is an important topological property of complex networks, which has great significance for understanding the function and organization of networks. Generally, community detection can be formulated as a single-objective or multi-objective optimization problem. Most existing optimization-based community detection algorithms are only applicable to disjoint community structure. However, it has been shown that in most real-world networks, a node may belong to multiple communities implying overlapping community structure. In this paper, we propose a multi-objective evolutionary algorithm for identifying overlapping community structure in complex networks based on the framework of non-dominated sorting genetic algorithm. Two negatively correlated evaluation metrics of community structure, termed as negative fitness sum and unfitness sum, are adopted as the optimization objectives. In our algorithm, link-based adjacency representation of overlapping community structure and a population initialization method based on local expansion are proposed. Extensive experimental results on both synthetic and real-world networks demonstrate that the proposed algorithm is effective and promising in detecting overlapping community structure in complex networks.
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页码:749 / 768
页数:19
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