Mixture-Rank Matrix Approximation for Collaborative Filtering
Li, Dongsheng, Chen, Chao, Liu, Wei, Lu, Tun, Gu, Ning, Chu, Stephen
–Neural Information Processing Systems
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.
Neural Information Processing Systems
Dec-31-2017
- Country:
- Asia
- China (0.15)
- Middle East (0.14)
- North America
- Canada > Ontario
- Toronto (0.14)
- United States (0.14)
- Canada > Ontario
- Asia
- Genre:
- Research Report > New Finding (0.34)
- Industry:
- Leisure & Entertainment (0.68)
- Media > Film (0.68)
- Technology: