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A new topic modeling based approach for aspect extraction in aspect based sentiment analysis: SS-LDA

机译:基于方面的情绪分析中的基于新主题建模方法:SS-LDA

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摘要

With the widespread use of social networks, blogs, forums and e-commerce web sites, the volume of user generated textual data is growing exponentially. User opinions in product reviews or in other textual data are crucial for manufacturers, retailers and providers of the products and services. Therefore, sentiment analysis and opinion mining have become important research areas. In user reviews mining, topic modeling based approaches and Latent Dirichlet Allocation (LDA) are significant methods that are used in extracting product aspects in aspect based sentiment analysis. However, LDA cannot be directly applied on user reviews and on other short texts because of data sparsity problem and lack of co-occurrence patterns. Several studies have been published for the adaptation of LDA for short texts. In this study, a novel method for aspect based sentiment analysis, Sentence Segment LDA (SS-LDA) is proposed. SS-LDA is a novel adaptation of LDA algorithm for product aspect extraction. The experimental results reveal that SS-LDA is quite competitive in extracting products aspects.
机译:随着社交网络,博客,论坛和电子商务网站的广泛使用,用户生成的文本数据的量呈指数增长。产品评论中的用户意见或其他文本数据对于产品和服务的制造商,零售商和提供商至关重要。因此,情绪分析和意见采矿已成为重要的研究领域。在用户评论挖掘,基于主题建模的方法和潜在的Dirichlet分配(LDA)是在基于方面的情绪分析中提取产品方面的重要方法。但是,由于数据稀疏问题和缺乏共同发生模式,LDA不能直接应用于用户评论和其他短文本。已发表几项研究,以适应LDA的短文本。在本研究中,提出了一种基于方面的情绪分析的新方法,句子段LDA(SS-LDA)。 SS-LDA是产品方面提取的LDA算法的新颖适应。实验结果表明,SS-LDA在提取产品方面方面具有竞争力。

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