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Twitter-TTM: An efficient online topic modeling for Twitter considering dynamics of user interests and topic trends

机译:Twitter-TTM:针对Twitter的高效在线主​​题建模,考虑了用户兴趣和主题趋势的动态

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Latent Dirichlet Allocation (LDA) is a topic model which has been applied to various fields. It has been also applied to user profiling or event summarization on Twitter. In the application of LDA to tweet collection, it generally treats aggregated all tweets of a user as a single document. On the other hand, Twitter-LDA which assumes a single tweet consists of a single topic has been proposed and showed that it is superior to the former way in topic semantic coherence. However, Twitter-LDA has a problem that it is not capable of online inference. In this paper, we extend Twitter-LDA in the following two points. First, we model the generation process of tweets more accurately by estimating the ratio between topic words and general words for each user. Second, we enable it to estimate dynamics of user interests and topic trends in online based on Topic Tracking Model (TTM) which models consumer purchase behaviors.
机译:潜在狄利克雷分配(LDA)是一种主题模型,已应用于各个领域。它也已应用于Twitter上的用户配置文件或事件摘要。在将LDA应用于推文收集时,通常会将汇总的用户所有推文视为单个文档。另一方面,提出了假设单个推文由单个主题组成的Twitter-LDA,并表明它在主题语义连贯性方面优于前一种方式。但是,Twitter-LDA存在无法在线推理的问题。在本文中,我们在以下两点上扩展了Twitter-LDA。首先,我们通过估算每个用户的主题词和普通词之间的比率,来更准确地建模推文的生成过程。其次,我们基于主题跟踪模型(TTM)对消费者购买行为进行建模,从而使它能够在线估计用户兴趣和主题趋势的动态。

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