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Boosting Temporal Community Detection via Modeling Community Evolution Characteristics

机译:通过建模社区演变特征提高时间群落检测

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Community structure analysis in dynamic network is widely concerned in various fields, which mainly focus on temporal community detection and community evolution analysis. Most of the related works usually fist detect communities and then analyze evolution. This leads to a loss of evolution information on temporal community detection because block structures and evolution characteristics coexist in dynamic networks. Even thought a few modelbased approaches consider the evolution characteristics into community detection, they need to know the number of communities in advance and ignore automatic determination of the number of communities, which is a model selection problem. In the paper, we propose an model, Evolutionary Bayesian Non-negative Matrix Factorization (EvoBNMF), to model community structures with evolution characteristics for boosting the performance of temporal community detection. In detail, EvoBNMF introduces evolution behaviors, which quantify the transition relationships of communities between adjacent snapshots, to describe the evolution characteristics of community structure. Innovatively, EvoBNMF can catch the most appropriate number of communities autonomously by shrinking the corresponding evolution behaviors. Experimental results from synthetic networks and real-world networks over several state-of-the-art methods show that our approach has superior performance on temporal community detection with the virtue of autonomous determination of the number of communities.
机译:在动态网络社区结构分析的广泛关注各个领域,其中主要集中在颞社区发现和社区演化分析。大部分相关工作通常拳头检测社区,然后分析进化。这导致的颞社区发现进化信息的损失,因为块结构和演化特征共存动态网络中。甚至想到了几个基于模型的方法考虑演变特征为社区发现,他们需要知道社区的事先数量而忽略社区的数量,这是一个模型选择问题的自动确定。在本文中,我们提出了一个模型,贝叶斯进化非负矩阵分解(EvoBNMF),与演化特征模型的社区结构的提升时间社区发现的性能。详细地说,EvoBNMF介绍进化的行为,量化相邻快照之间的社区的过渡关系,以描述社会结构的演变特征。创新,EvoBNMF可以自主通过缩小对应的变化行为赶上社区的最合适的数量。从合成网络和真实世界的网络,在国家的最先进的几种方法实验结果表明,我们的方法对时间的社区检测与凭借自主确定社区的数量的卓越性能。

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