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Helpfulness of online reviews: Examining review informativeness and classification thresholds by search products and experience products

机译:在线评论的有用性:通过搜索产品和体验产品检查评论的信息性和分类阈值

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摘要

Information overload often makes it difficult for consumers to identify helpful online product reviews through the traditional "helpful votes" function; therefore, it has become particularly important to efficiently identify helpful reviews. By differentiating search products from experience products, this research examines the impact of different measurements of review informativeness on review helpfulness, and proposes different classification thresholds to individually identify the helpfulness of online reviews for search products and for experience products, respectively. Further, our study applies machine learning algorithms to predict the performance of the classification based on our proposed review informativeness measurements and classification thresholds. All experiments were conducted using a dataset from JD.com, one of the largest online electronic marketplaces in China. Our results offer guidelines to design different helpfulness classification standards for search products and for experience products.
机译:信息超载通常使消费者难以通过传统的“有用投票”功能来识别有用的在线产品评论。因此,有效地识别有用的评论变得尤为重要。通过将搜索产品与体验产品区分开,本研究检查了评价信息的不同度量对评价帮助的影响,并提出了不同的分类阈值,以分别识别在线搜索对搜索产品和体验产品的帮助。此外,我们的研究应用机器学习算法,基于我们提出的评论信息量度和分类阈值来预测分类的性能。所有实验均使用来自京东(中国最大的在线电子交易市场之一)的数据集进行。我们的结果为设计针对搜索产品和体验产品的不同帮助分类标准提供了指导。

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