The movie recommendation system is an
information filtering tool, which is mainly based on big
data to predict the ratings of users and articles in order
to recommend their preferences. The movie
recommendation system provides a mechanism to help
users rank other users with similar interests. It is a
major part of e-commerce websites and applications.
The project focuses on the evaluation of different models
and algorithms, and its main purpose is to compare
different algorithms (such as collaborative filtering) and
models such as slope 1 etc. It also compares with existing
methods and analysis and interprets the results. The
average absolute error (MAE), standard deviation (SD),
root mean square error (RMSE) and t value of the movie
recommendation system give better results because our
method provides lower error values. The film lens
experiment data set can help you find the best method to
achieve high performance in terms of reliability and
efficiency, and provide accurate and personalized film
recommendations for current methods
Keywords : Recommendation System, Evaluation of Recommendation Systems, Collaborative Filtering, Content Based Filtering, Slope One, k Fold Validation, Precision and Recall, f1 Score