Abstract

While electronic word-of-mouth (eWOM) variables, such as volume and valence have been posited in previous studies to consistently affect product sales, there is a lack of studies on the different contexts and outcomes that affect the importance of eWOM variables. In order to fill this gap, this study attempts to use the helpfulness of reviews and reviewers as moderators to predict box office revenue, comparing the prediction performances of business intelligence (BI) methods (random forest, decision trees using boosting, the k-nearest neighbor method, discriminant analysis) using eWOM between high and low review or reviewer helpfulness subsample in the Korean movie market scrawled from the Naver Movies website. The results of applying machine learning methods show that movies with more helpful reviews or those that are reviewed by more helpful reviewers show greater prediction performance, and review and reviewer helpfulness improve the prediction power of eWOM for box office revenue. The prediction performance will improve if the characteristics of eWOM are likely to be combined to contribute to box office revenue to a greater extent.

Highlights

  • Box office revenue represents a crucial indicator for assessing the success of a movie (Liu et al, 2016; McKenzie, 2008)

  • The study shows the explanatory power of the electronic word-of-mouth (eWOM) variables of volume and valence, which have been investigated extensively in the literature when movies are divided into high and low review or reviewer helpfulness subsamples, which is insightful given that studies of the effect of eWOM on movie performance revenue between those with high and low review or reviewer helpfulness are nearly nonexistent

  • This indicates that review and reviewer helpfulness are crucial moderating factors increasing the explanatory power of eWOM for box office revenue

Read more

Summary

Introduction

Box office revenue represents a crucial indicator for assessing the success of a movie (Liu et al, 2016; McKenzie, 2008). The effective forecasting of box office revenue levels is crucial to decrease market risk, increase the competitiveness of the movie industry, and facilitate the advancement of movierelated markets. Previous electronic word-of-mouth (eWOM) literature posited that there exists an empirically validated relationship between eWOM variables and product sales. Due to the enhanced role of social networks for information sharing, eWOM has a greater effect on purchase decisions (Liang et al, 2011). WOM variables such as valence and volume are strong determinants of product sales in different product contexts (Chintagunta et al, 2010; Elwalda et al, 2016; Rui et al, 2013; Zhu and Zhang, 2010)

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call