Predictive Analytics for IMDb Top TV Ratings: A Linear Regression Approach to the Data of Top 250 IMDb TV Shows

Autor: Meryatul Husna, Lampson Pindahaman Purba, Muhammad Eri Rinaldy, Arif Ridho Lubis
Jazyk: English<br />Indonesian
Rok vydání: 2024
Předmět:
Zdroj: Journal of Applied Informatics and Computing, Vol 8, Iss 1, Pp 115-118 (2024)
Druh dokumentu: article
ISSN: 2548-6861
DOI: 10.30871/jaic.v8i1.7600
Popis: In the era of a growing entertainment industry, understanding audience preferences and predicting the financial performance of entertainment products such as films and television shows has become increasingly important. Previous research has demonstrated various approaches in understanding the factors that influence the financial performance of entertainment products. However, there is still a need for research to investigate other aspects of film and television show evaluation. This study aims to explore the contribution of linear regression in analysing the ratings and financial performance of IMDb's top TV shows. Through the incorporation of various data-informed and interpretative approaches, it is expected to gain a deeper understanding of the factors that influence the success of a television show. Using data from the Top 250 IMDb TV Shows, a predictive analysis was conducted to understand the relationship between the number of episodes and IMDb ratings. The results of the information showed a negative relationship between the number of episodes and IMDb rating, with the linear regression model predicting a decrease in IMDb rating as the number of episodes increases. Implications of this research include recommendations for content creators to consider both quality and quantity of content in the development of TV shows.
Databáze: Directory of Open Access Journals