Matrix Approximation under Local Low-Rank Assumption
Lee, Joonseok, Kim, Seungyeon, Lebanon, Guy, Singer, Yoram
Matrix approximation is a common tool in machine learning for building accurate prediction models for recommendation systems, text mining, and computer vision. A prevalent assumption in constructing matrix approximations is that the partially observed matrix is of low-rank. We propose a new matrix approximation model where we assume instead that the matrix is only locally of low-rank, leading to a representation of the observed matrix as a weighted sum of low-rank matrices. We analyze the accuracy of the proposed local low-rank modeling. Our experiments show improvements of prediction accuracy in recommendation tasks.
Jan-14-2013
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- Asia > Middle East
- Lebanon (0.05)
- North America > United States
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