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Modelling Sequential Text with an Adaptive Topic Model

机译:使用自适应主题模型对顺序文本建模

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摘要

Topic models are increasingly being used for text analysis tasks, often times replacing earlier semantic techniques such as latent semantic analysis. In this paper, we develop a novel adaptive topic model with the ability to adapt topics from both the previous segment and the parent document. For this proposed model, a Gibbs sampler is developed for doing posterior inference. Experimental results show that with topic adaptation, our model significantly improves over existing approaches in terms of perplexity, and is able to uncover clear sequential structure on, for example, Herman Melville's book "Moby Dick".
机译:主题模型正越来越多地用于文本分析任务,通常时常替换诸如潜在语义分析之类的早期语义技术。在本文中,我们开发了一种新颖的自适应主题模型,该模型具有对上一段和父文档中的主题进行适应的能力。对于此提出的模型,开发了Gibbs采样器以进行后验推断。实验结果表明,通过主题自适应,我们的模型在困惑方面大大优于现有方法,并且能够发现例如Herman Melville的书“ Moby Dick”上清晰的顺序结构。

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