An empirical investigation of online review helpfulness: A big data perspective

作者:

Highlights:

• We investigate the determinants of online review helpfulness in the perspectives of source/ review/ context factors.

• We employ a larger and more comprehensive data, including 14,051,211 online reviews in 24 product categories from Amazon.com.

• Review extremity, review depth, and reviewer expertise have a positive effect on review helpfulness.

• Review inconsistency, product satisfaction/ popularity/ intangibility/ variety, and reviewer experience have negative effects.

• Product intangibility moderates the effect of review extremity and depth on review helpfulness.

摘要

This study investigates the determinants of online review helpfulness, adopting various predictors from three dimensions of the online review management: source factors, review factors, and context factors. Based on a large, comprehensive dataset that includes 14,051,211 online reviews in 24 product categories from an ecommerce retailer, Amazon.com, this study provides empirical evidence on the effect of source and reviews factors on perceived review helpfulness, which the extant literature has reached inconsistent conclusions. In addition, this study considers the effects on review helpfulness created by context factors: product satisfaction, product popularity, product intangibility, and product variety. These factors are scarcely discussed in the existing literature. The major findings include (1) review extremity, review depth, and reviewer expertise have a positive effect on review helpfulness; (2) review inconsistency, product intangibility, product satisfaction, product popularity, product variety, and reviewer experience have negative effects; and (3) product intangibility moderates the effect of review extremity and depth on review helpfulness.

论文关键词:Review helpfulness,eWOM,amazon.com,Big data,Review/source/context factors

论文评审过程:Received 22 April 2020, Revised 12 September 2020, Accepted 14 September 2020, Available online 20 September 2020, Version of Record 6 November 2020.

论文官网地址:https://doi.org/10.1016/j.dss.2020.113403