A critical assessment of consumer reviews: A hybrid NLP-based methodology

作者:

Highlights:

• Apply correlated topic modelling and Shannon's Entropy Theory to build predictors of online review helpfulness.

• Propose four predictors - review depth, review divergence, semantic entropy and keyword relevance.

• Significant interaction effects of reviewer's credibility, age of review, and review divergence towards the main effects.

• Check the robustness of main results across different product categories and higher thresholds of helpfulness votes.

摘要

Online reviews are integral to consumer decision-making while purchasing products on an e-commerce platform. Extant literature has conclusively established the effects of various review and reviewer related predictors towards perceived helpfulness. However, background research is limited in addressing the following problem: how can readers interpret the topical summary of many helpful reviews that explain multiple themes and consecutively focus in-depth? To fill this gap, we drew upon Shannon's Entropy Theory and Dual Process Theory to propose a set of predictors using NLP and text mining to examine helpfulness. We created four predictors - review depth, review divergence, semantic entropy and keyword relevance to build our primary empirical models. We also reported interesting findings from the interaction effects of the reviewer's credibility, age of review, and review divergence. We also validated the robustness of our results across different product categories and higher thresholds of helpfulness votes. Our study contributes to the electronic commerce literature with relevant managerial and theoretical implications through these findings.

论文关键词:Online reviews,Natural language processing (NLP),Shannon's entropy,Text analytics,Zero-truncated regression

论文评审过程:Received 19 May 2021, Revised 27 March 2022, Accepted 23 April 2022, Available online 28 April 2022, Version of Record 10 June 2022.

论文官网地址:https://doi.org/10.1016/j.dss.2022.113799