Mining the determinants of review helpfulness: a novel approach using intelligent feature engineering and explainable AI
Data Technologies and Applications
ISSN: 2514-9288
Article publication date: 5 July 2022
Issue publication date: 17 March 2023
Abstract
Purpose
This paper aims to find determinants that can predict the helpfulness of online customer reviews (OCRs) with a novel approach.
Design/methodology/approach
The approach consists of feature engineering using various text mining techniques including BERT and machine learning models that can classify OCRs according to their potential helpfulness. Moreover, explainable artificial intelligence methodologies are used to identify the determinants for helpfulness.
Findings
The important result is that the boosting-based ensemble model showed the highest prediction performance. In addition, it was confirmed that the sentiment features of OCRs and the reputation of reviewers are important determinants that augment the review helpfulness.
Research limitations/implications
Each online community has different purposes, fields and characteristics. Thus, the results of this study cannot be generalized. However, it is expected that this novel approach can be integrated with any platform where online reviews are used.
Originality/value
This paper incorporates feature engineering methodologies for online reviews, including the latest methodology. It also includes novel techniques to contribute to ongoing research on mining the determinants of review helpfulness.
Keywords
Acknowledgements
This research was supported by Brain Korea 21 FOUR.
Citation
Kim, J., Lee, H. and Lee, H. (2023), "Mining the determinants of review helpfulness: a novel approach using intelligent feature engineering and explainable AI", Data Technologies and Applications, Vol. 57 No. 1, pp. 108-130. https://doi.org/10.1108/DTA-12-2021-0359
Publisher
:Emerald Publishing Limited
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