DocumentCode
1416345
Title
Generalized Low-Rank Approximations of Matrices Revisited
Author
Liu, Jun ; Chen, Songcan ; Zhou, Zhi-Hua ; Tan, Xiaoyang
Author_Institution
Dept. of Comput. Sci. & Eng., Nanjing Univ. of Aeronaut. & Astronaut., Nanjing, China
Volume
21
Issue
4
fYear
2010
fDate
4/1/2010 12:00:00 AM
Firstpage
621
Lastpage
632
Abstract
Compared to singular value decomposition (SVD), generalized low-rank approximations of matrices (GLRAM) can consume less computation time, obtain higher compression ratio, and yield competitive classification performance. GLRAM has been successfully applied to applications such as image compression and retrieval, and quite a few extensions have been successively proposed. However, in literature, some basic properties and crucial problems with regard to GLRAM have not been explored or solved yet. For this sake, we revisit GLRAM in this paper. First, we reveal such a close relationship between GLRAM and SVD that GLRAM´s objective function is identical to SVD´s objective function except the imposed constraints. Second, we derive a lower bound of GLRAM´s objective function, and discuss when the lower bound can be touched. Moreover, from the viewpoint of minimizing the lower bound, we answer one open problem raised by Ye (Machine Learning, 2005), i.e., a theoretical justification of the experimental phenomenon that, under given number of reduced dimension, the lowest reconstruction error is obtained when the left and right transformations have equal number of columns. Third, we explore when and why GLRAM can perform well in terms of compression, which is a fundamental problem concerning the usability of GLRAM.
Keywords
approximation theory; matrix algebra; singular value decomposition; GLRAM; SVD; generalized low-rank approximation; matrix approximation; singular value decomposition; Dimensionality reduction; generalized low-rank approximations of matrices (GLRAM); reconstruction error; singular value decomposition (SVD); Algorithms; Artificial Intelligence; Data Compression; Humans; Pattern Recognition, Automated;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2010.2040290
Filename
5411923
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