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The Fine-Grained Topic Evolution Based on the Probability Model

机译:基于概率模型的细粒度主题演化

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Nowadays online social media like Weibo is gradually replacing the traditional Internet services, being a convenient and swift approach for information diffusion and access. Tracking the evolution of the topic and the trend of the situation according to the user-interested aspect across the social network has been an issue of considerable interest and has not been fully investigated. Prior research on topic evolution has often refinements to the full-analysis topic models which typically perform full analysis on the whole data to identify all emerging topics. However, such methods do not perform more detailed topic evolution analysis users always want on some specific aspects. In this study, we present a model based on targeted topic model that automatically discover and summarize the fine-grained evolutionary patterns of topics in a text stream. We evaluate our method on a Weibo stream containing over ninety thousand weibos. Experimental results show that the proposed method can discover the fine-grained evolutionary patterns of topic effectively.
机译:如今,像微博这样的在线社交媒体正逐渐取代传统的Internet服务,这是一种方便快捷的信息传播和访问方法。根据整个社交网络中用户感兴趣的方面跟踪主题的演变和情况的趋势已经引起人们极大的兴趣,并且尚未进行充分研究。对主题演变的先前研究通常对完整分析主题模型进行了改进,该模型通常对整个数据执行完整分析以识别所有新兴主题。但是,此类方法无法执行用户在某些特定方面始终希望进行的更详细的主题演变分析。在这项研究中,我们提出了一个基于目标主题模型的模型,该模型可以自动发现和总结文本流中主题的细粒度演化模式。我们在包含超过九万个微博的微博流上评估了我们的方法。实验结果表明,该方法可以有效地发现主题的细粒度演化模式。

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