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Helping users discover perspectives: Enhancing opinion mining with joint topic models

机译:帮助用户发现观点:加强与联合主题模型的意见挖掘

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Support or opposition concerning a debated claim such as abortion should be legal can have different underlying reasons, which we call perspectives. This paper explores how opinion mining can be enhanced with joint topic modeling, to identify distinct perspectives within the topic, providing an informative overview from unstructured text. We evaluate four joint topic models (TAM, JST, VODUM, and LAM) in a user study assessing human understandability of the extracted perspectives. Based on the results, we conclude that joint topic models such as TAM can discover perspectives that align with human judgments. Moreover, our results suggest that users are not influenced by their pre-existing stance on the topic of abortion when interpreting the output of topic models.
机译:关于违规索赔的支持或反对堕胎等应该是法律可能具有不同的潜在原因,我们称之为观点。本文探讨了如何通过联合主题建模增强挖掘的意见挖掘,以确定主题中的不同观点,从非结构化文本提供信息概述。在评估提取的观点的人类可理解的用户学习中,我们评估四个联合主题模型(TAM,JST,Vodum和Lam)。根据结果​​,我们得出结论,TAM等联合主题模型可以发现与人类判断一致的透视图。此外,我们的结果表明,在解释主题模型的输出时,用户不会受到他们对堕胎主题的预先存在的影响。

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