Movie Recommender System Using Parameter Tuning of User and Movie Neighbourhood via Co-Clustering

Procedia Computer Science(2023)

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摘要
Recommender System is a information filtering tool to filter the relevant information from given information in the present era of big data. Movie Recommender System is machine learning based autonomous tool that filters the movies from big movie database like netflix, amazon etc according to user preferences. The main focus of this paper is Partitional Weighted co-clustering for Movie Recommender System. The primary objective of this research article is to fine tune the parameters of user and movie neighborhoods by setting different values for row clusters number and column clutsers number parameters of co-clustering. Test results obtained from the Movie database show that the proposed method can bring more accurate personalized recommendations for the movie as compared to existing methods of the order of 7.91%.
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关键词
movie recommender system,movie neighbourhood,parameter tuning,co-clustering
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