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Identifying helpful reviews based on customer's mentions about experiences

机译:根据客户对体验的提及来识别有用的评论

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摘要

As numerous on-line product reviews that vary in quality are published every day, much attention is being paid to quality assessment of such reviews. The current metric of using the number of votes by other customers such as 'helpful vote', despite its dominance, does not yield a fully effective outcome. In this article, we propose a novel metric to rank product reviews by 'mentions about experiences', accounting for customer's personal experiences, as a way of identifying high quality reviews. The proposed metric has two parameters that capture time expressions related to the use of products and product entities over different purchasing time periods by linguistic clues. The empirical results show that this metric is not only as helpful as the best existing metrics, 'helpful vote' or 'reviewer rank', but is also free from undesirable biases that either penalize recency or are driven solely by popularity. Our usability study also shows that ordering reviews by our metric is considered helpful on the accounts of both usefulness and satisfaction.
机译:每天都会发布大量质量各异的在线产品评论,因此,人们非常重视此类评论的质量评估。尽管使用“有帮助的投票”之类的优势,但目前使用其他客户的投票数的度量标准并未产生完全有效的结果。在本文中,我们提出了一种新颖的指标,可以根据“关于体验的提及”对产品评论进行排名,并考虑客户的个人经历,以此作为识别高质量评论的一种方式。拟议的度量标准具有两个参数,它们通过语言线索来捕获与在不同购买时间段内使用产品和产品实体有关的时间表达。实证结果表明,该指标不仅与现有的最佳指标(“有帮助的投票”或“评论者排名”)一样有用,而且没有不利的偏见,这些偏见会损害新近度或仅由受欢迎程度驱动。我们的可用性研究还表明,根据我们的指标来订购评论对有用性和满意度都有帮助。

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