Joint Topic-Opinion Model for Implicit Feature Extracting

Li Sun, Jie Chen, Jiyun Li, YingLi Peng
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引用次数: 11

Abstract

Topic model has been used to extract implicit features yet little concerns have been given to general opinion words, e.g., "Okey" (good). In this paper we present a modified topic model joint topic-opinion model (JTO) for extracting implicit features of opinion words including special and general ones. Our model is based on an extension to standard LDA model by adding an opinion level. This model considers both topics and context of opinion words. Experiments show that JTO provides higher accuracy in implicit features extraction.
隐式特征提取的联合主题-意见模型
主题模型被用来提取隐式特征,但很少关注一般意见词,例如“Okey”(好)。本文提出了一种改进的主题模型——联合主题-意见模型(JTO),用于提取意见词的隐式特征,包括特殊意见词和一般意见词。我们的模型是基于对标准LDA模型的扩展,增加了意见级别。该模型同时考虑了意见词的主题和语境。实验表明,JTO在隐式特征提取方面具有较高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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