Recommendation system is a process of suggesting more likely items to
the users based on their preferences and interest. Applications of
recommendation system are seen in almost many areas like e-
commerce, social media and multimedia platform. In recent days, the
hybrid collaborative filtering techniques are used for the
recommendation to improve the suggestions for users. Nowadays,
collaborative filtering using neural networks is used in
recommendation process. This paper aims to develop a modified neural
collaborative filtering model to recommend movies to users. Movies are
rated by the users in the scale of 1 to 5. Users prefer to watch movies
not only based on the ratings but also like other factors like genre, cast,
crew, etc. In this paper genre is also considered along with the ratings
to train the neural model. The user-movie interaction matrix used by
many collaborative filtering techniques suffers from sparsity. To
overcome this problem, the modified neural collaborative filtering
model is used to find the ratings of the movies not watched by the user.
Finally a recommendation module using FP-Growth algorithm is
developed to suggest users with movies considering ratings for the
movie and genre of the movie. The loss function, mean absolute error
is used to analyze the performance of the modified neural collaborative
filtering model. The testing loss of trained model is found to be 0.1017.
The recommendation module is evaluated using Normalized
Discounted Cumulative Gain (NDCG) metric. The experimental results
show that the proposed recommendation system performs better
compared to Nearest neighbor and correlation based recommendation systems.
R. Bhavani1, K.G. Yamuna2 Government College of Engineering, Sriramgam, India1, L&T Technology Services, Chennai, India2
Collaborative Filtering, Neural Network, Recommendation System, Neural Collaborative Filtering, Movie Recommendation
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| Published By : ICTACT
Published In :
ICTACT Journal on Soft Computing ( Volume: 15 , Issue: 4 , Pages: 3688 - 3694 )
Date of Publication :
January 2025
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