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C-Blondel: An Efficient Louvain-Based Dynamic Community Detection Algorithm

机译:C-Blondel:基于高效的基于Louvain的动态群落检测算法

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摘要

One of the most interesting topics in the scope of social network analysis is dynamic community detection, keeping track of communities’ evolutions in a dynamic network. This article introduces a new Louvain-based dynamic community detection algorithm relied on the derived knowledge of the previous steps of the network evolution. The algorithm builds a compressed graph, where its supernodes represent the detected communities of the previous step and its superedges show the edges among the supernodes. The algorithm not only constructs the compressed graph with low computational complexity but also detects the communities through the integration of the Louvain algorithm into the graph. The efficiency of the proposed algorithms is widely investigated in this article. By doing so, several evaluations have been performed over three standard real-world data sets, namely Enron Email, Cit-HepTh, and Facebook data sets. The obtained results indicate the superiority of the proposed algorithm with respect to the execution time as an efficiency metric. Likewise, the results show the modularity of the proposed algorithm as another effectiveness metric compared with the other well-known related algorithms.
机译:社交网络分析范围中最有趣的主题之一是动态社区检测,跟踪社区在动态网络中的演变。本文介绍了一种新的基于Louvain的动态社区检测算法,依赖于网络演进的前一步的派生知识。该算法构建了一种压缩图,其中其超级节点表示前一步的检测到的社区,其超级节目在超节点之间显示边缘。该算法不仅构造了具有低计算复杂度的压缩图,还通过将Louvain算法集成到图形中来检测社区。本文普遍研究了所提出的算法的效率。通过这样做,已经在三个标准的真实数据集,即安康电子邮件,CIT-Hepth和Facebook数据集中进行了几种评估。所获得的结果表明所提出的算法关于执行时间作为效率度量的优越性。同样,结果表明,与其他众所周知的相关算法相比,所提出的算法的模块化是另一种有效性。

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