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Community-based Topic Modeling for Social Tagging

机译:基于社区的社会标签主题建模

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Exploring community is fundamental for uncovering the connections between structure and function of complex networks and for practical applications in many disciplines such as biology and sociology. In this paper, we propose a TTR-LDA-Community model which combines the Latent Dirichlet Allocation model (LDA) and the Girvan-Newman community detection algorithm with an inference mechanism. The model is then applied to data from Delicious, a popular social tagging system, over the time period of 2005-2008. Our results show that 1) users in the same community tend to be interested in similar set of topics in all time periods; and 2) topics may divide into several sub-topics and scatter into different communities over time. We evaluate the effectiveness of our model and show that the TTR-LDA-Community model is meaningful for understanding communities and outperforms TTR-LDA and LDA models in tag prediction.
机译:探索社区对于揭示复杂网络的结构和功能之间的联系以及生物学和社会学等许多学科的实际应用至关重要。在本文中,我们提出了一个TTR-LDA-社区模型,该模型将Latent Dirichlet分配模型(LDA)和Girvan-Newman社区检测算法与推理机制相结合。然后,将该模型应用于2005-2008年期间来自受欢迎的社交标签系统Delicious的数据。我们的结果表明:1)同一社区的用户在所有时间段内都对相似的主题感兴趣; 2)主题可能会分为几个子主题,并随时间分散到不同的社区中。我们评估了模型的有效性,并表明TTR-LDA-社区模型对于理解社区具有重要意义,并且在标签预测中优于TTR-LDA和LDA模型。

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