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Document-level Multi-aspect Sentiment Classification by Jointly Modeling Users, Aspects, and Overall Ratings

机译:通过联合建模用户,方面和总体评分对文档级别的多方面情感分类

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Document-level multi-aspect sentiment classification aims to predict user's sentiment polarities for different aspects of a product in a review. Existing approaches mainly focus on text information. However, the authors (i.e. users) and overall ratings of reviews are ignored, both of which are proved to be significant on interpreting the sentiments of different aspects in this paper. Therefore, we propose a model called Hierarchical User Aspect Rating Network (HUARN) to consider user preference and overall ratings jointly. Specifically, HUARN adopts a hierarchical architecture to encode word, sentence, and document level information. Then, user attention and aspect attention are introduced into building sentence and document level representation. The document representation is combined with user and overall rating information to predict aspect ratings of a review. Diverse aspects are treated differently and a multi-task framework is adopted. Empirical results on two real-world datascts show that HUARN achieves state-of-the-art performances.
机译:文档级多方面情感分类旨在预测评论中产品不同方面的用户情感极性。现有的方法主要集中在文本信息上。但是,作者(即用户)和评论的总体评分都被忽略了,这两者在解释本文不同方面的情感方面都具有重要意义。因此,我们提出了一个称为“分层用户方面评估网络”(HUARN)的模型,以共同考虑用户偏好和总体评估。具体来说,HUARN采用分层体系结构来编码单词,句子和文档级别的信息。然后,将用户注意和方面注意引入到构建句子和文档级别表示中。文档表示与用户和总体评分信息相结合,以预测评论的方面评分。不同方面的处理方式有所不同,并且采用了多任务框架。在两个真实世界的数据cts上的经验结果表明,HUARN达到了最先进的性能。

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