DocumentCode
701644
Title
Bounded-SVD: A Matrix Factorization Method with Bound Constraints for Recommender Systems
Author
Bang Hai Le ; Kien Quang Nguyen ; Thawonmas, Ruck
Author_Institution
Intell. Comput. Entertainment Lab., Ritsumeikan Univ., Kusatsu, Japan
fYear
2015
fDate
20-21 Feb. 2015
Firstpage
23
Lastpage
26
Abstract
In this paper, we present a new matrix factorization method for recommender system problems, named bounded-SVD, which utilizes the constraint that all the ratings in the rating matrix are bounded within a pre-determined range. In our proposed method, the bound constraints are included in the objective function so that both the task of minimizing errors and the constraints are taken into account during the optimization process. For evaluation, we compare the performance of bounded-SVD with an existing method, called Bounded Matrix Factorization (BMF), which also uses the bound constraints on the ratings. The results on major real-world recommender system datasets show that our method outperforms BMF in almost cases and it is also faster and more simple to implement than BMF. Moreover, the way the bound constraints are integrated in bounded-SVD can also be applied to other optimization problems with bound constraints as well.
Keywords
matrix decomposition; optimisation; recommender systems; singular value decomposition; bound constraints; bounded-SVD performance; errors minimizing; matrix factorization method; optimization process; rating matrix; recommender system problems; Computers; Estimation error; Linear programming; Optimization; Recommender systems; Sparse matrices; Bound constraints; Collaborative filtering; Matrix factorization; Recommender systems; Stochastic gradient descent;
fLanguage
English
Publisher
ieee
Conference_Titel
Emerging Information Technology and Engineering Solutions (EITES), 2015 International Conference on
Conference_Location
Pune
Print_ISBN
978-1-4799-1837-9
Type
conf
DOI
10.1109/EITES.2015.10
Filename
7083379
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