An analysis of review content and reviewer variables that contribute to review helpfulness

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Review helpfulness is attracting increasing attention of practitioners and academics. It helps in reducing risks and uncertainty faced by users in online shopping. This study examines uninvestigated variables by looking at not only the review characteristics but also important indicators of reviewers. Several significant review content and two reviewer variables are proposed and an effective review helpfulness prediction model is built using stochastic gradient boosting learning method. This study derived a mechanism to extract novel review content variables from review text. Six popular machine learning models and three real-life Amazon review data sets are used for analysis. Our results are robust to several product categories and along three Amazon review data sets. The results show that review content variables deliver the best performance as compared to the reviewer and state-of-the-art baseline as a standalone model. This study finds that reviewer helpfulness per day and syllables in review text strongly relates to review helpfulness. Moreover, the number of space, aux verb, drives words in review text and productivity score of a reviewer are also effective predictors of review helpfulness. The findings will help customers to write better reviews, help retailers to manage their websites intelligently and aid customers in their product purchasing decisions.

论文关键词:Stochastic GB,Helpfulness per day,Auxverb,Amazon reviews,eWOM,Machine learning

论文评审过程:Received 13 July 2017, Revised 26 September 2017, Accepted 27 September 2017, Available online 7 October 2017, Version of Record 7 October 2017.

论文官网地址:https://doi.org/10.1016/j.ipm.2017.09.004