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Sparse latent model with dual graph regularization for collaborative filtering

Authors :
Zhiwei Tang
Zhichao Li
Sen Wu
Xiaodong Feng
Source :
Neurocomputing. 284:128-137
Publication Year :
2018
Publisher :
Elsevier BV, 2018.

Abstract

Matrix factorization (MF) has been one of the powerful machine learning techniques for collaborative flittering, and it is also widely extended to improve the quality for various tasks. For recommendation tasks, it is noting that a single user or item is actually shown to be sparsely correlated with latent factors extracted by MF, which has not been developed in existing works. Thus, we are focusing on levering sparse representation, as a successful feature learning schema for high dimensional data, into latent factor model. We propose a Sparse LAtent Model (SLAM) based on the ideas of sparse representation and matrix factorization. In SLAM, the item and user representation vectors in the latent space are expected to be sparse, induced by the l 1 -regularization on those vectors. Besides, we extend a dual graph Lapalacian regularization term to simultaneously integrate both user network and item network knowledge. Also, an iterative optimization method is presented to solve the new learning problem. The experiments on real datasets show that SLAM can predict the user–item ratings better than the state-of-the-art matrix factorization based methods.

Details

ISSN :
09252312
Volume :
284
Database :
OpenAIRE
Journal :
Neurocomputing
Accession number :
edsair.doi...........5fa687d62731bf3168c970cc34f234bb
Full Text :
https://doi.org/10.1016/j.neucom.2018.01.011