Machine Learning Decision System on the Empirical Analysis of the Actual Usage of Interactive Entertainment: A Perspective of Sustainable Innovative Technology

Author:

Guste Rex Revian A.12,Ong Ardvin Kester S.13ORCID

Affiliation:

1. School of Industrial Engineering and Engineering Management, Mapúa University, 658 Muralla St., Intramuros, Manila 1002, Philippines

2. School of Graduate Studies, Mapúa University, 658 Muralla St., Intramuros, Manila 1002, Philippines

3. E.T. Yuchengco School of Business, Mapua University, 1191 Pablo Ocampo Sr. Ext, Makati 1204, Philippines

Abstract

This study focused on the impact of Netflix’s interactive entertainment on Filipino consumers, seamlessly combining vantage points from consumer behavior and employing data analytics. This underlines the revolutionary aspect of interactive entertainment in the quickly expanding digital media ecosystem, particularly as Netflix pioneers fresh content distribution techniques. The main objective of this study was to find the factors impacting the real usage of Netflix’s interactive entertainment among Filipino viewers, filling a critical gap in the existing literature. The major goal of using advanced data analytics techniques in this study was to understand the subtle dynamics affecting customer behavior in this setting. Specifically, the random forest classifier with hard and soft classifiers was assessed. The random forest compared to LightGBM was also employed, alongside the different algorithms of the artificial neural network. Purposive sampling was used to obtain responses from 258 people who had experienced Netflix’s interactive entertainment, resulting in a comprehensive dataset. The findings emphasized the importance of hedonic motivation, underlining the requirement for highly engaging and rewarding interactive material. Customer service and device compatibility, for example, have a significant impact on user uptake. Furthermore, behavioral intention and habit emerged as key drivers, revealing interactive entertainment’s long-term influence on user engagement. Practically, the research recommends strategic platform suggestions that emphasize continuous innovation, user-friendly interfaces, and user-centric methods. This study was able to fill in the gap in the literature on interactive entertainment, which contributes to a better understanding of consumer consumption and lays the groundwork for future research in the dynamic field of digital media. Moreover, this study offers essential insights into the intricate interaction of consumer preferences, technology breakthroughs, and societal influences in the ever-expanding environment of digital entertainment. Lastly, the comparative approach to the use of machine learning algorithms provides insights for future works to adopt and employ among human factors and consumer behavior-related studies.

Funder

Mapua University Directed Research for Innovation and Value Enhancement

Publisher

MDPI AG

Reference89 articles.

1. The effects of film trailers on shaping consumer expectations in the entertainment industry—A qualitative analysis;Finsterwalder;J. Retail. Consum. Serv.,2012

2. Transforming the media and entertainment industry;Ahuja;J. Cases Inf. Technol.,2022

3. (2024, April 14). Statista Internet Usage in the Philippines. Available online: https://www.statista.com/topics/5660/internet-economy-in-the-philippines/.

4. Estopace, E. (2024, April 14). Netflix’s Answer to Slow Internet: Adaptive Streaming. Available online: https://www.philstar.com/business/technology/2016/06/06/1590535/netflixs-answer-slow-internet-adaptive-streaming.

5. (2024, April 14). Statista Streaming in the Philippines. Available online: https://www.statista.com/topics/8367/streaming-in-the-philippines/.

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