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Structural Topic Model for Latent Topical Structure Analysis

机译:潜在主题结构分析的结构主题模型

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Topic models have been successfully applied to many document analysis tasks to discover topics embedded in text. However, existing topic models generally cannot capture the latent topical structures in documents. Since languages are intrinsically cohesive and coherent, modeling and discovering latent topical transition structures within documents would be beneficial for many text analysis tasks. In this work, we propose a new topic model, Structural Topic Model, which simultaneously discovers topics and reveals the latent topical structures in text through explicitly modeling topical transitions with a latent first-order Markov chain. Experiment results show that the proposed Structural Topic Model can effectively discover topical structures in text, and the identified structures significantly improve the performance of tasks such as sentence annotation and sentence ordering.
机译:主题模型已成功应用于许多文档分析任务,以发现嵌入在文本中的主题。但是,现有的主题模型通常无法捕获文档中潜在的主题结构。由于语言本质上是内在的和连贯的,因此在文档内建模和发现潜在的主题转换结构对于许多文本分析任务将是有益的。在这项工作中,我们提出了一个新的主题模型,即“结构性主题模型”,该主题模型通过使用潜在的一阶马尔可夫链对主题转换进行显式建模,从而同时发现主题并揭示文本中的潜在主题结构。实验结果表明,提出的结构主题模型可以有效地发现文本中的主题结构,识别出的结构可以显着提高句子注释和句子排序等任务的性能。

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