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Community detection in complex networks using evolutionary computation
[摘要] In real world many complex systems can be naturally represented as complex networks of which one distinctive feature is the community structure. The community detection, i.e., identifying the community structure, provides insight into the relationship and interaction between network function and topology and has become increasingly important in many scientific fields. In this thesis, we firstly propose a cooperative coevolutionary module identification algorithm named CoCoMi to address the scalability problem when detecting community structures in especially medium and large-scale complex networks. Secondly, we propose a consensus community detection algorithm based on the multimodal optimization and fast Surprise named CoCoMOS to detect community structures in complex networks. Thirdly, we propose an adaptive ensemble selection and multimodal optimization based consensus community detection algorithm named MASCOD to find high quality and stable consensus partitions of community structures in complex networks. The performance of these three proposed algorithms is evaluated on some well-known social, artificial and biological complex networks and experimental results demonstrate that all these three proposed algorithms have very competitive performance compared with other state-of-the-art community detection algorithms.
[发布日期]  [发布机构] University:University of Birmingham;Department:School of Computer Science
[效力级别]  [学科分类] 
[关键词] Q Science;QA Mathematics;QA75 Electronic computers. Computer science [时效性] 
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