Movie Recommendation System using Composite Ranking
Irish Mehta, Aashal Kamdar

TL;DR
This paper presents a content-based movie recommendation system that combines metadata, visual content, and user reviews through a composite ranking algorithm to improve personalized suggestions.
Contribution
It introduces a novel hybrid ranking approach that integrates multiple content similarity metrics for enhanced movie recommendations.
Findings
Effective ranking based on metadata, visuals, and reviews
Improved recommendation relevance demonstrated
Utilizes advanced techniques like VGG19 and sentiment analysis
Abstract
In today's world, abundant digital content like e-books, movies, videos and articles are available for consumption. It is daunting to review everything accessible and decide what to watch next. Consequently, digital media providers want to capitalise on this confusion and tackle it to increase user engagement, eventually leading to higher revenues. Content providers often utilise recommendation systems as an efficacious approach for combating such information overload. This paper concentrates on developing a synthetic approach for recommending movies. Traditionally, movie recommendation systems use either collaborative filtering, which utilises user interaction with the media, or content-based filtering, which makes use of the movie's available metadata. Technological advancements have also introduced a hybrid technique that integrates both systems. However, our approach deals solely…
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Taxonomy
TopicsVideo Analysis and Summarization · Recommender Systems and Techniques · Image Retrieval and Classification Techniques
Methodsk-Means Clustering
