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A Relationship Strength-Aware Topic Model for Communities Discovery in Online Social Networks

机译:在线社交网络中用于社区发现的关系强度感知主题模型

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Automatic discovering latent communities of users from observed textual content and their relationships is vital for understanding the cooperation and interaction patterns of users on large scale. In this paper, a novel probabilistic generative model was proposed to detect latent communities in a social network based on semantic information and the social relationships between users. In this model, it was assumed that users from the same community tend to share similar interests, and those who engage in common topics should be closely connected to each other on the topology structure of the social network. Users can have multiple interests and participate in multiple communities. Further, heterogeneous relationship strength was used in this paper to improve community discovery. The research indicated that the probabilistic generative model present in this paper has a good capability of discovering meaningful communities and topics on real-world data from Twitter.
机译:从观察到的文本内容及其关系中自动发现潜在的用户社区对于大规模理解用户的合作和交互模式至关重要。本文提出了一种新的概率生成模型,该模型基于语义信息和用户之间的社交关系来检测社交网络中的潜在社区。在此模型中,假定来自同一社区的用户倾向于共享相似的兴趣,并且从事共同主题的用户应在社交网络的拓扑结构上紧密联系在一起。用户可以有多个兴趣并参与多个社区。此外,本文使用异类关系强度来改善社区发现。研究表明,本文介绍的概率生成模型具有很好的能力,可以从Twitter的真实数据中发现有意义的社区和主题。

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