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Mining overlapping and hierarchical communities in complex networks

机译:在复杂网络中挖掘重叠的分层社区

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Community detection in the social networks is one of the most important tasks of social computing. Highly relevant researches indicate that the social network generally contains both an overlapping and hierarchical structure. This paper introduces an efficient and functional community detection algorithm MOHCC, which can concurrently discover overlapping and hierarchical organization in complex networks. This algorithm first extracts all maximal cliques from the original complex network. Merges all extracted maximal cliques into a dendrogram by using the aggregative framework presented in MOHCC. Finally, it cuts through the dendrogram and obtains a network partition with maximum extended partition density. Experimental results utilizing computer-generated artificial networks and real-world social benchmark networks give satisfactory correspondence. (C) 2014 Elsevier B.V. All rights reserved.
机译:社交网络中的社区检测是社交计算的最重要任务之一。高度相关的研究表明,社交网络通常包含重叠和层次结构。本文介绍了一种高效且功能强大的社区检测算法MOHCC,该算法可以同时发现复杂网络中的重叠和分层组织。该算法首先从原始复杂网络中提取所有最大集团。通过使用MOHCC中提供的聚合框架,将所有提取的最大集团合并为树状图。最后,它会切断树状图并获得具有最大扩展分区密度的网络分区。利用计算机生成的人工网络和现实世界的社会基准网络的实验结果给出了令人满意的对应关系。 (C)2014 Elsevier B.V.保留所有权利。

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