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Topic model-based link community detection with adjustable range of overlapping

机译:重叠范围可调的基于主题模型的链接社区检测

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摘要

Complex networks have attracted much research attentions. Community detection is an important problem in complex network which is useful in a variety of applications such as information propagation, link prediction, recommendations and marketing. In this paper, we focus on discovering overlapping community structure using link partition. We proposed a LDA-based link partition (LBLP) method which can find communities with adjustable range of overlapping. This method employs topic model to detect link partition, which can calculate the community belonging factor for each link. Based on the belonging factor, link partitions with bridge links can be found efficiently. We validate the effectiveness of our solution on both real-world and synthesized networks. The experiment results demonstrate that the approach can find meaningful and relevant link community structure.
机译:复杂的网络吸引了许多研究关注。社区检测是复杂网络中的一个重要问题,可用于各种应用程序中,例如信息传播,链接预测,推荐和营销。在本文中,我们专注于使用链接分区发现重叠的社区结构。我们提出了一种基于LDA的链接分区(LBLP)方法,该方法可以找到重叠范围可调整的社区。该方法采用主题模型来检测链接分区,从而可以计算每个链接的社区归属因子。根据所属因素,可以有效地找到具有桥链接的链接分区。我们验证了我们的解决方案在实际网络和综合网络上的有效性。实验结果表明,该方法可以找到有意义且相关的链接社区结构。

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