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An adaptable fine-grained sentiment analysis for summarization of multiple short online reviews

机译:自适应的细粒度情感分析,可汇总多个简短的在线评论

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摘要

In this study, we present a novel method in generating summaries of multiple online reviews using a fine-grained sentiment extraction model for short texts, which is adaptable to different domains and languages. Adaptability of a model is defined as its ability to be easily modified and be usable on different domains and languages. This is important because of the diversity of domains and languages available. The fine-grained sentiment extraction model is divided into two methods: sentiment classification and aspect extraction. The sentiment classifier is built using a three-level classification approach, while the aspect extractor is built using extended biterm topic model (eBTM), an extension of LDA topic model for short texts. Overall, results show that the sentiment classifier outperforms baseline models and industry-standard classifiers while the aspect extractor outperforms other topic models in terms of aspect diversity and aspect extracting power. In addition, using the Naver movies dataset, we show that online review summarization can be effectively constructed using the proposed methods by comparing the results of our method and the results of a movie awards ceremony.
机译:在这项研究中,我们提出了一种新颖的方法,可使用短文本的细粒度情感提取模型来生成多个在线评论的摘要,该模型可适应不同的领域和语言。模型的适应性定义为易于修改且可在不同领域和语言上使用的能力。由于可用的域和语言的多样性,这一点很重要。细粒度的情感提取模型分为两种方法:情感分类和方面提取。情感分类器是使用三级分类方法构建的,而方面提取器是使用扩展的双项主题模型(eBTM)构建的,eBTM是针对短文本的LDA主题模型的扩展。总体而言,结果表明,情感方面的分类器优于基准模型和行业标准分类器,而方面方面的提取器在方面多样性和方面提取能力方面优于其他主题模型。此外,通过使用Naver电影数据集,我们证明了通过比较我们的方法结果和电影颁奖典礼的结果,可以使用所提出的方法有效地构建在线评论摘要。

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