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A Phrase Topic Model Based on Distributed Representation

机译:基于分布式表示的短语主题模型

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摘要

Traditional topic models have been widely used for analyzing semantic topics from electronic documents. However, the obvious defects of topic words acquired by them are poor in readability and consistency. Only the domain experts are possible to guess their meaning. In fact, phrases are the main unit for people to express semantics. This paper presents a Distributed Representation-Phrase Latent Dirichlet Allocation (DR-Phrase LDA) which is a phrase topic model. Specifically, we reasonably enhance the semantic information of phrases via distributed representation in this model. The experimental results show the topics quality acquired by our model is more readable and consistent than other similar topic models.
机译:传统主题模型已广泛用于分析电子文档的语义主题。然而,由它们获取的主题词的明显缺陷在可读性和一致性方面差。只有域名专家才能猜出他们的含义。事实上,短语是人们表达语义的主要单位。本文提出了一个分布式表示 - 短语潜在Dirichlet分配(DR-Flace LDA),它是一个短语主题模型。具体地,我们通过该模型中的分布式表示,合理地增强了短语的语义信息。实验结果表明,我们的模型获得的主题质量比其他类似主题模型更具可读和始终如一。

著录项

  • 来源
    《Computers, Materials & Continua》 |2020年第1期|455-469|共15页
  • 作者单位

    Jiangsu Internet of Things and Moblie Internet Technology Engineering Laboratory Huaiyin Institute of Technology Huai'an 223003 China;

    Jiangsu Internet of Things and Moblie Internet Technology Engineering Laboratory Huaiyin Institute of Technology Huai'an 223003 China;

    Jiangsu Internet of Things and Moblie Internet Technology Engineering Laboratory Huaiyin Institute of Technology Huai'an 223003 China;

    Jiangsu Internet of Things and Moblie Internet Technology Engineering Laboratory Huaiyin Institute of Technology Huai'an 223003 China;

    Jiangsu Internet of Things and Moblie Internet Technology Engineering Laboratory Huaiyin Institute of Technology Huai'an 223003 China University of Fribourg Fribourg 1700 Switzerland;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Phrase; topic model; LDA; distributed representation; Gibbs sampling;

    机译:短语;主题模型;LDA;分布式表示;吉布斯抽样;

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