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Efficient l1-norm-based low-rank matrix approximations for large-scale problems using alternating rectified gradient method : Efficient l(1)-norm-based low-rank matrix approximations for large-scale problems using alternating rectified gradient method

Cited 33 time in Web of Science Cited 40 time in Scopus
Authors

Kim, Eunwoo; Lee, Minsik; Choi, Chong-Ho; Kwak, Nojun; Oh, Songhwai

Issue Date
2015-02
Publisher
IEEE Computational Intelligence Society
Citation
IEEE Transactions on Neural Networks and Learning Systems, Vol.26 No.2, pp.237-251
Abstract
Low-rank matrix approximation plays an important role in the area of computer vision and image processing. Most of the conventional low-rank matrix approximation methods are based on the l(2)-norm (Frobenius norm) with principal component analysis (PCA) being the most popular among them. However, this can give a poor approximation for data contaminated by outliers (including missing data), because the l(2)-norm exaggerates the negative effect of outliers. Recently, to overcome this problem, various methods based on the l(1)-norm, such as robust PCA methods, have been proposed for low-rank matrix approximation. Despite the robustness of the methods, they require heavy computational effort and substantial memory for high-dimensional data, which is impractical for real-world problems. In this paper, we propose two efficient low-rank factorization methods based on the l(1)-norm that find proper projection and coefficient matrices using the alternating rectified gradient method. The proposed methods are applied to a number of low-rank matrix approximation problems to demonstrate their efficiency and robustness. The experimental results show that our proposals are efficient in both execution time and reconstruction performance unlike other state-of-the-art methods.
ISSN
2162-237X
URI
https://hdl.handle.net/10371/207282
DOI
https://doi.org/10.1109/TNNLS.2014.2312535
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  • Graduate School of Convergence Science & Technology
  • Department of Intelligence and Information
Research Area Feature Selection and Extraction, Object Detection, Object Recognition

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