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Detecting the evolving community structure in dynamic social networks

机译:检测动态社交网络中不断发展的社区结构

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Identifying the evolving community structure of social networks has recently drawn increasing attention. Evolutionary clustering, previously proposed to detect the evolution of clusters over time, presents a temporal smoothness framework to simultaneously maximize clustering accuracy and minimize the clustering drift between two successive time steps. Under this framework, evolving patterns of communities in dynamic networks were detected by finding the best trade-off between the clustering accuracy and temporal smoothness. However, two main drawbacks in previous methods limit the effectiveness of dynamic community detection. One is that the classic operators implemented by existing methods cannot avoid that a node is often inter-connected to most of its neighbors. The other is that those methods take it for granted that an inter-connection cannot exist between nodes clustered into the same community, which results in a limited search space. In this paper, we propose a novel multi-objective evolutionary clustering algorithm called DECS, to detect the evolving community structure in dynamic social networks. Specifically, we develop a migration operator cooperating with efficient operators to ensure that nodes and their most neighbors are grouped together, and use a genome matrix encoding the structure information of networks to expand the search space. DECS calculates the modularity based on the genome matrix as one of objectives to optimize. Experimental results on synthetic networks and real-world social networks demonstrate that DECS outperforms in both clustering accuracy and smoothness, contrasted with other state-of-the-art methods.
机译:识别不断发展的社交网络社区结构已引起越来越多的关注。先前提出的用于检测聚类随时间的演化的进化聚类提出了一种时间平滑框架,以同时最大化聚类精度并最小化两个连续时间步长之间的聚类漂移。在此框架下,通过在聚类精度和时间平滑度之间找到最佳平衡,来检测动态网络中社区的演变模式。但是,先前方法的两个主要缺点限制了动态社区检测的有效性。一个是通过现有方法实现的经典运算符无法避免节点经常与大多数邻居互连。另一个是那些方法理所当然地认为,在群集到同一社区的节点之间不能存在互连,这会导致搜索空间有限。在本文中,我们提出了一种新颖的多目标进化聚类算法DECS,以检测动态社交网络中不断发展的社区结构。具体来说,我们开发了与高效算子合作的迁移算子,以确保将节点及其最邻近节点组合在一起,并使用基因组矩阵对网络的结构信息进行编码,以扩展搜索空间。 DECS基于基因组矩阵来计算模块化,作为优化目标之一。在合成网络和现实世界社交网络上的实验结果表明,与其他最新方法相比,DECS在聚类准确性和平滑性方面均胜过其他同类。

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