DocumentCode
2210271
Title
One-Class Matrix Completion with Low-Density Factorizations
Author
Sindhwani, Vikas ; Bucak, Serhat S. ; Hu, Jianying ; Mojsilovic, Aleksandra
Author_Institution
T.J. Watson Res. Center, Bus. Anal. & Math. Sci., IBM, Yorktown Heights, NY, USA
fYear
2010
fDate
13-17 Dec. 2010
Firstpage
1055
Lastpage
1060
Abstract
Consider a typical recommendation problem. A company has historical records of products sold to a large customer base. These records may be compactly represented as a sparse customer-times-product ``who-bought-what" binary matrix. Given this matrix, the goal is to build a model that provides recommendations for which products should be sold next to the existing customer base. Such problems may naturally be formulated as collaborative filtering tasks. However, this is a {it one-class} setting, that is, the only known entries in the matrix are one-valued. If a customer has not bought a product yet, it does not imply that the customer has a low propensity to {it potentially} be interested in that product. In the absence of entries explicitly labeled as negative examples, one may resort to considering unobserved customer-product pairs as either missing data or as surrogate negative instances. In this paper, we propose an approach to explicitly deal with this kind of ambiguity by instead treating the unobserved entries as optimization variables. These variables are optimized in conjunction with learning a weighted, low-rank non-negative matrix factorization (NMF) of the customer-product matrix, similar to how Transductive SVMs implement the low-density separation principle for semi-supervised learning. Experimental results show that our approach gives significantly better recommendations in comparison to various competing alternatives on one-class collaborative filtering tasks.
Keywords
groupware; information filtering; matrix decomposition; optimisation; recommender systems; collaborative filtering; customer-product pairs; low density factorization; matrix completion; matrix factorization; missing data; optimization variables; recommendation problem; Collaborative Filtering; Implicit Feedback; Matrix Completion; Non-negative Matrix Factorizations; Recommender Systems;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Mining (ICDM), 2010 IEEE 10th International Conference on
Conference_Location
Sydney, NSW
ISSN
1550-4786
Print_ISBN
978-1-4244-9131-5
Electronic_ISBN
1550-4786
Type
conf
DOI
10.1109/ICDM.2010.164
Filename
5694084
Link To Document