Study on Movie Recommendation System Using Machine Learning
Abstract
As network technology and entertainment production have evolved, the types of movies available have become increasingly diverse, leaving viewers bewildered as to how to choose among them. The recommendation system was intended to make the selection process more efficient. Users are given product or service recommendations by these systems. These types of solutions have also improved the quality and efficiency of decision-making. A variety of machine learning algorithms may be used to create the recommendation system. Among these methods, we’re using Content Based Filtering, Collaborative Based Filtering, k-mean clustering, and the Naive Bayes classifier. The experimental investigation with a cold start revealed the potential of all of these strategies by demonstrating a large improvement in accuracy.
Authors
Aditya Narayan Singh, Rahul Kumar Sharma, Aman Agarwal, Amarendra Mishra, Mukul Pundhir, Anant Vijay