2012 ©
             Publication
Journal Publication
Research Title A Hybrid Recommender System for Improving Rating Prediction of Movie Recommendation 
Date of Distribution 30 June 2022 
Conference
     Title of the Conference 2022 19th International Joint Conference on Computer Science and Software Engineering (JCSSE) 
     Organiser IEEEXplore® 
     Conference Place Faculty of Science, Silpakorn University 
     Province/State Bangkok 
     Conference Date 22 June 2022 
     To 25 June 2022 
Proceeding Paper
     Volume 19 
     Issue
     Page 1-6 
     Editors/edition/publisher IEEEXplore® 
     Abstract Because of COVID-19 pandemic, online movies are now extremely popular. While the movie theaters have not serviced and people are staying quarantine, movies are the best choice for relaxing and treating stress. In present, recommender systems are widely integrated into many platforms of movie applications. A hybrid recommender system is one promising technique to improve the system performance, especially for cold-start, data sparsity, and scalability. This paper proposed a hybrid of matrix factorization, biased matrix factorization, and factor wise matrix factorization to solve all mentioned drawback problems. Simulation shows that the proposed hybrid algorithm can decrease approximately 11.91% and 10.70% for RMSE and MAE, respectively, when compared with the traditional methods. In addition, the proposed algorithm is capable of scalability. While the number of datasets is tremendously increased by 10 times, it is still effectively executed. 
Author
647020019-5 Mr. NIKORN KANNIKAKLANG [Main Author]
College of Computing Doctoral Degree

Peer Review Status มีผู้ประเมินอิสระ 
Level of Conference นานาชาติ 
Type of Proceeding Full paper 
Type of Presentation Oral 
Part of thesis false 
Presentation awarding false 
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