Box office sales and social media: A cross-platform comparison of predictive ability and mechanisms

作者:

Highlights:

• We assess the value of social media data over movie data in predicting movie sales

• We provide a theoretical framework to explain the differential predictive power

• Facebook data is more indicative in predicting movie sales than Twitter data

• User-generated content on Twitter suffers from a too-good-to-be-true-effect

• Volume-based user-generated content variables are the most important

摘要

This paper aims to determine the power of social media data (Facebook and Twitter) in predicting box office sales, which platforms, data types and variables are the most important and why. To do so, we compare several models based on movie data, Facebook data, and Twitter data. We benchmark these model comparisons using various prediction algorithms. Next, we apply information-fusion sensitivity analysis to evaluate which variables are driving the predictive performance. Our analysis shows that social media data significantly increases the predictive power of traditional box office prediction models. Facebook data clearly outperform Twitter data and including user-generated content next to marketer-generated always improves predictive power. Our sensitivity analysis reveals that volume and valence based combination variables pertaining to Facebook comments are the most important variables. Furthermore, we provide an in-depth analysis of the potential mechanisms driving differential predictive ability of Facebook and Twitter. Our findings suggest that Twitter has less of an impact on box office sales than Facebook because Twitter users have less source credibility than Facebook users. Our results are important for practitioners, marketers and academics who want to employ social media data for box office sales predictions.

论文关键词:Predictive analytics,Social media,Machine learning,Data mining,Box office sales,Marketing analytics

论文评审过程:Received 6 July 2020, Revised 5 February 2021, Accepted 6 February 2021, Available online 13 February 2021, Version of Record 13 June 2021.

论文官网地址:https://doi.org/10.1016/j.dss.2021.113517