(Publisher of Peer Reviewed Open Access Journals)

International Journal of Advanced Computer Research (IJACR)

ISSN (Print):2249-7277    ISSN (Online):2277-7970
Volume-7 Issue-29 March-2017
Full-Text PDF
DOI:10.19101/IJACR.2017.729004
Paper Title : Movies recommendation system using collaborative filtering and k-means
Author Name : Phongsavanh Phorasim and Lasheng Yu
Abstract :

The purpose of this research is to develop a movie recommender system using collaborative filtering technique and K-means. Collaborative filtering is the most successful algorithm in the recommender system’s field. A recommender system is an intelligent system that can help a user to come across interesting items. This paper considers the users m (m is the number of users), points in n dimensional space (n is the number of items) and we present an approach based on user clustering to produce a recommendation for the active user by a new approach. We used k-means clustering algorithm to categorize users based on their interests. We evaluate the traditional collaborative filtering and our approach to compare them. Our results show the proposed algorithm is more accurate than the traditional existing one, besides it is less time consuming than the previous existing methods.

Keywords : Recommendation system, Collaborative filtering, K-means, Clustering, Data mining.
Cite this article : Phongsavanh Phorasim and Lasheng Yu, " Movies recommendation system using collaborative filtering and k-means " , International Journal of Advanced Computer Research (IJACR), Volume-7, Issue-29, March-2017 ,pp.52-59.DOI:10.19101/IJACR.2017.729004
References :
[1]Zhan J, Hsieh CL, Wang IC, Hsu TS, Liau CJ, Wang DW. Privacy-preserving collaborative recommender systems. IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews). 2010; 40(4):472-6.
[Crossref] [Google Scholar]
[2]Gong S. A collaborative filtering recommendation algorithm based on user clustering and item clustering. Journal of Software. 2010; 5(7):745-52.
[Crossref] [Google Scholar]
[3]Manvi SS, Nalini N, Bhajantri LB. Recommender system in ubiquitous commerce. In international conference on electronics computer technology 2011 (pp. 434-8). IEEE.
[Crossref] [Google Scholar]
[4]Pu P, Chen L, Hu R. A user-centric evaluation framework for recommender systems. In proceedings of the fifth ACM conference on recommender systems 2011 (pp. 157-64). ACM.
[Crossref] [Google Scholar]
[5]Hu R, Pu P. Acceptance issues of personality-based recommender systems. In proceedings of the third ACM conference on recommender systems 2009 (pp. 221-4). ACM.
[Crossref] [Google Scholar]
[6]Pathak B, Garfinkel R, Gopal RD, Venkatesan R, Yin F. Empirical analysis of the impact of recommender systems on sales. Journal of Management Information Systems. 2010; 27(2):159-88.
[Crossref] [Google Scholar]
[7]Witten IH, Frank E, Hall MA. Data mining: practical machine learning tools and techniques. Morgan Kaufmann Publishers, Elsevier; 2011.
[Google Scholar]
[8]Han J, Kamber M. Data mining: concepts and techniques. Elsevier; 2011.
[Google Scholar]
[9]Hand DJ, Mannila H, Smyth P. Principles of data mining. MIT press; 2001.
[Google Scholar]
[10]Zhao Y. R and data mining: examples and case studies. Academic Press; 2012.
[Google Scholar]
[11]Kużelewska U. Advantages of information granulation in clustering algorithms. In international conference on agents and artificial intelligence 2011 (pp. 131-45). Springer Berlin Heidelberg.
[Crossref] [Google Scholar]
[12]McSherry D. Explaining the pros and cons of conclusions in CBR. In European conference on case-based reasoning 2004 (pp. 317-30). Springer Berlin Heidelberg.
[Crossref] [Google Scholar]
[13]Felfernig A, Friedrich G, Schmidt Thieme L. Guest editors introduction: recommender systems. IEEE Intelligent Systems. 2007; 22(3):18-21.
[Crossref] [Google Scholar]
[14]Adomavicius G, Tuzhilin A. Toward the next generation of recommender systems: a survey of the state of the art and possible extensions. IEEE Transactions on Knowledge and Data Engineering. 2005; 17(6):734-49.
[Crossref] [Google Scholar]
[15]Adomavicius G, Tuzhilin A. Recommendation technologies: survey of current methods and possible extensions. Information Systems Working Papers Series, 2004.
[Google Scholar]