Abstract
AbstractThe use of social media has grown exponentially in recent years up to become a reflection of human social attitudes and to represent today the main channel for conducting discussions and sharing opinions. For this reason, the vast amount of information generated is often used for predicting outcomes of real-world events in different fields, including business, politics, and health, as well as in the entertainment industry. In this paper, we focus on how data from Twitter can be used to predict ratings of a large set of TV shows regardless of their specific genre. Given a show, the idea is to exploit features concerning the pre-release hype on Twitter for rating predictions. We propose a novel machine learning-based approach to the genre-independent TV show popularity prediction problem. We compared the performance of several well-known predictive methods, and as a result, we discovered that LSTM and Random Forest can predict the ratings in the USA entertainment market, with a low mean squared error of 0.058. Furthermore, we tested our model by using data of “never seen” shows, by deriving interesting results in terms of error rates. Finally, we compared performance against relevant solutions available in the literature, with discussions about challenges arousing from the analysis of shows in different languages.
Funder
Università degli Studi di Salerno
Publisher
Springer Science and Business Media LLC
Reference55 articles.
1. The changing world of digital in (2023) We are social ltd. https://www.wearesocial.com
2. Datareportal Digital (2023): global overview report. https://datareportal.com/reports/digital-2023-global-overview-report
3. Qiu J, Lin Z, Shuai Q (2019) Investigating the opinions distribution in the controversy on social media. Inform Sci 489:274–288
4. Lazer D, Pentland A, Adamic L, Aral S, Barabási A-L, Brewer D, Christakis N, Contractor N, Fowler J, Gutmann M et al (2009) Computational social science. Science 323(5915):721–723
5. Akcora CG, Gel YR, Kantarcioglu M, Lyubchich V, Thuraisingham B (2019) Graphboot: quantifying uncertainty in node feature learning on large networks. IEEE Trans Knowl Data Eng 33(1):116–127
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献