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Detection of Topic Communities in Social Networks Based on Tri-LDA Model

机译:基于Tri-LDA模型的社交网络主题社区检测

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Social networks, in particular microblogs, have gained huge popularity in recent years. The detection of topic communities in social networks carries high value in commercial promotion, public opinion monitoring, etc. There are some existing algorithms that can detect topic communities very well. In this chapter we propose a new approach by using probabilistic generative topic model LDA (Latent Dirichlet Allocation): we add a modification to LDA to get Tri-LDA model, to process the data of friendship between users in a social network for detection of topic communities. The experiment result shows that the topic communities found by Tri-LDA are basically consistent with the realistic topic communities that are hand-labeled by the authors in the test data set.
机译:社交网络,尤其是微博客,近年来已经获得了巨大的普及。社交网络中主题社区的检测在商业推广,民意监测等方面具有很高的价值。现有的一些算法可以很好地检测主题社区。在本章中,我们提出了一种使用概率生成主题模型LDA(潜在狄利克雷分配)的新方法:我们对LDA进行了修改以获得Tri-LDA模型,以处理社交网络中用户之间的友谊数据以检测主题社区。实验结果表明,Tri-LDA发现的主题社区与作者在测试数据集中手工标记的现实主题社区基本一致。

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