Treffer: Data-driven Insights Machine Learning Approaches for Netflix Content Analysis and Visualization

Title:
Data-driven Insights Machine Learning Approaches for Netflix Content Analysis and Visualization
Source:
Journal of Engineering Research and Reports. 27:278-290
Publisher Information:
Sciencedomain International, 2025.
Publication Year:
2025
Document Type:
Fachzeitschrift Article
ISSN:
2582-2926
DOI:
10.9734/jerr/2025/v27i41471
Accession Number:
edsair.doi...........b71540e099401d0ac2e908cc3aacb71b
Database:
OpenAIRE

Weitere Informationen

This paper looks at Netflix's strategic application of machine learning and data analytics to improve user involvement, maximize content strategy, and keep its leadership in the cutthroat streaming market. This research reveals important patterns in Netflix's content library including the geographical distribution of content creation, content classification by rating, and changing watching habits over time by use of exploratory data analysis (EDA) and sophisticated visualization tools like Python and Tableau. According to the study, Netflix's content and user data is mostly produced by the United States (36.6%) and India (24.1%), followed by other nations including Japan, France, and Canada albeit in lesser but noteworthy proportions. Moreover, a high inclination for adult audience material is clear: 43.0% of TV series rated "TV-MA" and 33.7% of movies categorized under the same grade. Using clustering and regression among other machine learning methods, content success is predicted and audience preferences are analyzed, therefore illuminating the impact of particular genres and directors on audience trends. Content additions show a spike in output between 2014 and 2020, with the United States keeping leadership as nations like South Korea and India become more well-known via a time-series study. Correct data integrity guarantees by data preprocessing—including null value analysis—allows correct insights. With genres like "Stand-Up Comedy" and "Dramas, International Movies" rising as top categories, the report also emphasizes Netflix's dependence on prominent filmmakers and genre-specific content initiatives. This work shows how data-driven decision-making impacts Netflix's content acquisition and recommendation system by combining visualizing with machine learning. Future studies should investigate geographical variances, sentiment analysis, and predictive modeling to better grasp audience involvement techniques and streaming industry dynamics.