Modeling the evolution of associated data

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Statistical topic models have been proposed for modeling documents and authorship information. However, few previous works have studied the evolution of associated data. In this paper, we investigate how to model trends of changes in document content and author interests simultaneously over time. We propose two models: a bag-of-words based Author–Time–Topic model that extends the state-of-the-art LDA-style topic model and a Hidden Markov Author–Time–Topic model, which can model interdependencies between topics. We use the Gibbs EM algorithm for parameter estimation. We apply these models to two data sets: NIPS papers and Yahoo group posts. Experimental results show that our models can achieve a lower perplexity (− 2.0%–20%) than the baseline LDA and Author–Topic model, when modeling quickly evolving associated data. Experiments also reveal that the proposed models can accurately capture the hot topics in different periods (e.g. “Yao at preseason” in Aug-2004, when the Chinese player Ming Yao became a highlight in the NBA) from the two data sets.

论文关键词:Topic model,Probabilistic model,Evolution analysis,Knowledge discovery

论文评审过程:Received 15 September 2008, Revised 16 March 2010, Accepted 16 March 2010, Available online 25 March 2010.

论文官网地址:https://doi.org/10.1016/j.datak.2010.03.009