Zeta hull pursuits: Learning nonconvex data hulls
Yuanjun Xiong, Wei Liu, et al.
NeurIPS 2014
Low-rank matrix approximation (LRMA) methods have achieved excellent accuracy among today's collaborative filtering (CF) methods. In existing LRMA methods, the rank of user/item feature matrices is typically fixed, i.e., the same rank is adopted to describe all users/items. However, our studies show that submatrices with different ranks could coexist in the same user-item rating matrix, so that approximations with fixed ranks cannot perfectly describe the internal structures of the rating matrix, therefore leading to inferior recommendation accuracy. In this paper, a mixture-rank matrix approximation (MRMA) method is proposed, in which user-item ratings can be characterized by a mixture of LRMA models with different ranks. Meanwhile, a learning algorithm capitalizing on iterated condition modes is proposed to tackle the non-convex optimization problem pertaining to MRMA. Experimental studies on MovieLens and Netflix datasets demonstrate that MRMA can outperform six state-of-the-art LRMA-based CF methods in terms of recommendation accuracy.
Yuanjun Xiong, Wei Liu, et al.
NeurIPS 2014
Chao Chen, Hao Zhang, et al.
CIKM 2019
Junchi Yan, Chao Zhang, et al.
CVPR 2015
Jiaming Cui, Tun Lu, et al.
CSCWD 2019