4.6 Review

Ranking online consumer reviews

期刊

出版社

ELSEVIER
DOI: 10.1016/j.elerap.2018.03.008

关键词

Big data challenge; E-commerce; Helpfulness; Machine learning; Online reviews

资金

  1. Ministry of Electronics and Information Technology (MeitY), Government of India through Visvesvaraya PhD Scheme for Electronics and IT

向作者/读者索取更多资源

Product reviews are posted online by the hundreds and thousands for popular products. Handling such a large volume of continuously generated online content is a challenging task for buyers, sellers and researchers. The purpose of this study is to rank the overwhelming number of reviews using their predicted helpfulness scores. The helpfulness score is predicted using features extracted from review text, product description, and customer question-answer data of a product using the random-forest classifier and gradient boosting regressor. The system classifies reviews into low or high quality with the random-forest classifier. The helpfulness scores of the high-quality reviews are only predicted using the gradient boosting regressor. The helpfulness scores of the low-quality reviews are not calculated because they are never going to be in the top k reviews. They are just added at the end of the review list to the review-listing website. The proposed system provides fair review placement on review listing pages and makes all high-quality reviews visible to customers on the top. The experimental results on data from two popular Indian e-commerce websites validate our claim, as 3-4 newer high-quality reviews are placed in the top ten reviews along with 5-6 older reviews based on review helpfulness. Our findings indicate that inclusion of features from product description data and customer question-answer data improves the prediction accuracy of the helpfulness score.

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