Design and Development of an Efficient Demographic-based Movie Recommender System using Hybrid Machine Learning Techniques
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Published:2024-07-01
Issue:4
Volume:19
Page:
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ISSN:1841-9844
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Container-title:INTERNATIONAL JOURNAL OF COMPUTERS COMMUNICATIONS & CONTROL
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language:
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Short-container-title:INT J COMPUT COMMUN, Int. J. Comput. Commun. Control
Author:
Paranjape Vishal,Nihalani Neelu,Mishra Nishchol
Abstract
Movie Recommender systems are frequently used in academics and industry to give users with relevant, engaging material based on their rating history. However, most traditional methods suffer from the cold-start problem, which is the initial lack of item ratings and data sparsity. The Hybrid Machine Learning (ML) technique is proposed for a movie recommendation system. Demographic data is collected from the Movie Lens dataset, and attributes are evaluated using the Attribute Analysis module. The Aquila Optimization Algorithm is used to select the best attributes, while Random Forest classifier is used for classification. Data is clustered using Fuzzy Probabilistic Cmeans Clustering Algorithm (FPCCA), and the Correspondence Index Assessment Phase (CIAP) uses Bhattacharyya Coefficient in Collaborative Filtering (BCCF) for similarity index calculation. The Outcomes gives the proposed method obtained low error, such as MAE has 0.44, RMSE has 0.63 compared with the baseline methods.
Publisher
Agora University of Oradea