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Numerical linear algebra / Singular value decomposition / Matrices / Matrix theory / Matrix / Orthogonal matrix / Rank / Principal component analysis / QR decomposition / Algebra / Linear algebra / Mathematics
Date: 2015-03-26 11:57:44
Numerical linear algebra
Singular value decomposition
Matrices
Matrix theory
Matrix
Orthogonal matrix
Rank
Principal component analysis
QR decomposition
Algebra
Linear algebra
Mathematics

Spectral Gap Error Bounds for Improving CUR Matrix Decomposition and the Nystr¨ om Method David G. Anderson Department of Mathematics

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