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Making the Best Use of Review Summary for Sentiment Analysis

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arxiv 1911.02711 v2 pith:BUFNOWW5 submitted 2019-11-07 cs.CL

Making the Best Use of Review Summary for Sentiment Analysis

classification cs.CL
keywords reviewsummaryanalysissentimentbetterinformationmethodsmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Sentiment analysis provides a useful overview of customer review contents. Many review websites allow a user to enter a summary in addition to a full review. Intuitively, summary information may give additional benefit for review sentiment analysis. In this paper, we conduct a study to exploit methods for better use of summary information. We start by finding out that the sentimental signal distribution of a review and that of its corresponding summary are in fact complementary to each other. We thus explore various architectures to better guide the interactions between the two and propose a hierarchically-refined review-centric attention model. Empirical results show that our review-centric model can make better use of user-written summaries for review sentiment analysis, and is also more effective compared to existing methods when the user summary is replaced with summary generated by an automatic summarization system.

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