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A Posteriori Approach for Community Detection

A Posteriori Approach for Community Detection
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摘要 Conventional community detection approaches in complex network are based on the optimization of a priori decision,i.e.,a single quality function designed beforehand.This paper proposes a posteriori decision approach for community detection.The approach includes two phases:in the search phase,a special multi-objective evolutionary algorithm is designed to search for a set of tradeoff partitions that reveal the community structure at different scales in one run;in the decision phase,three model selection criteria and the Possibility Matrix method are proposed to aid decision makers to select the preferable solutions through differentiating the set of optimal solutions according to their qualities.The experiments in five synthetic and real social networks illustrate that,in one run,our method is able to obtain many candidate solutions,which effectively avoids the resolution limit existing in priori decision approaches.In addition,our method can discover more authentic and comprehensive community structures than those priori decision approaches. Conventional community detection approaches in complex network are based on the optimization of a priori decision,i.e.,a single quality function designed beforehand.This paper proposes a posteriori decision approach for community detection.The approach includes two phases:in the search phase,a special multi-objective evolutionary algorithm is designed to search for a set of tradeoff partitions that reveal the community structure at different scales in one run;in the decision phase,three model selection criteria and the Possibility Matrix method are proposed to aid decision makers to select the preferable solutions through differentiating the set of optimal solutions according to their qualities.The experiments in five synthetic and real social networks illustrate that,in one run,our method is able to obtain many candidate solutions,which effectively avoids the resolution limit existing in priori decision approaches.In addition,our method can discover more authentic and comprehensive community structures than those priori decision approaches.
出处 《Journal of Computer Science & Technology》 SCIE EI CSCD 2011年第5期792-805,共14页 计算机科学技术学报(英文版)
基金 Supported by the National Natural Science Foundation of China under Grant Nos.60905025,61074128,61035003 National High Technology Research and Development 863 Program of China under Grant No.2009AA04Z136
关键词 complex network community detection multi-objective evolutionary algorithm MODULARITY complex network community detection multi-objective evolutionary algorithm modularity
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