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Fusing hotel ratings and reviews with hesitant terms and consensus measures

机译:将酒店评分和评论与犹豫不决的术语和共识措施融合在一起

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摘要

People have come to refer to reviews for valuable information on products before making a purchase. Digesting relevant opinions regarding a product by reading all the reviews is challenging. An automated methodology which aggregates opinions across all the reviews for a single product to help differentiate any two products having the same overall rating is defined. In order to facilitate this process, rating values, which capture the overall satisfaction, and written reviews, which contain the sentiment of the experience with a product, are fused together. In this manner, each reviewer's opinion is expressed as an interval rating by means of hesitant fuzzy linguistic term sets. These new expressions of opinion are then aggregated and expressed in terms of a central opinion and degree of consensus representing the agreement among the sentiment of the reviewers for an individual product. A real case example based on 2506 TripAdvisor reviews of hotels in Rome during 2017 is provided. The efficiency of the proposed methodology when discriminating between two hotels is compared with the TripAdvisor rating and median of reviews. The proposed methodology obtains significant differentiation between product rankings.
机译:人们在购买之前开始参考评论以获取有关产品的宝贵信息。通过阅读所有评论来消化有关产品的相关意见是具有挑战性的。定义了一种自动化方法,该方法汇总了单个产品的所有评论的意见,以帮助区分具有相同总体评分的任何两个产品。为了促进这一过程,将反映整体满意度的评分值和包含产品体验情绪的书面评论融合在一起。以这种方式,每个审稿人的意见通过犹豫不决的模糊语言术语集表示为区间评级。然后,这些新的意见表达被汇总起来,并以中心意见和共识程度的形式表达,代表了审稿人对单个产品的一致意见。本文提供了基于2017年2506条TripAdvisor对罗马酒店点评的真实案例。将所提出的方法在区分两家酒店时的效率与TripAdvisor评级和评论中位数进行比较。所提出的方法在产品排名之间获得了显着的差异。

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