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Polarized Topic Modeling for User Characteristics in Online Discussion Community

机译:在线讨论社区中针对用户特征的极化主题建模

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Topic modeling methods, such as latent Dirichlet allocation (LDA), are successfully applied in a number of computational linguistics applications. This paper presents a new approach to topic modeling within a new domain other than linguistic analysis. We present a pilot study where an LDA model is applied to an online community rather than the textual contents they produced using the idea that a user in an article is analogous to a word in a document within the context of the LDA model. We also propose a method for determining polarity using positive (+) and negative (-) signs regarding topics. As a result, each user has a topic score whose absolute value is equal to the topic distribution learned from topic modeling, and its sign indicates the polarity on that specific subject. We demonstrate the effectiveness of our proposed approach with experimental results, which provide opportunities to apply the LDA model to targets other than lexical elements.
机译:诸如潜在的Dirichlet分配(LDA)之类的主题建模方法已成功应用于许多计算语言学应用程序中。本文介绍了一种新的主​​题建模方法,可以在新的领域内进行语言分析。我们提供了一项初步研究,其中LDA模型应用于在线社区,而不是他们使用文章中的用户类似于LDA模型的上下文中的文档中的单词这样的思想来产生文本内容。我们还提出了一种使用有关主题的正号(+)和负号(-)来确定极性的方法。结果,每个用户都有一个主题分数,其绝对值等于从主题建模中学到的主题分布,并且其符号表示该特定主题的极性。我们通过实验结果证明了我们提出的方法的有效性,这为将LDA模型应用于除词法元素之外的目标提供了机会。

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