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Numerical linear algebra / QR decomposition / QR algorithm / Orthogonal matrix / Householder transformation / Kernel / Eigenvalues and eigenvectors / Matrix multiplication / LU decomposition / Algebra / Linear algebra / Mathematics
Date: 2013-10-26 16:17:06
Numerical linear algebra
QR decomposition
QR algorithm
Orthogonal matrix
Householder transformation
Kernel
Eigenvalues and eigenvectors
Matrix multiplication
LU decomposition
Algebra
Linear algebra
Mathematics

Reconstructing Householder Vectors from Tall-Skinny QR Grey Ballard James Demmel Laura Grigori

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Source URL: www.eecs.berkeley.edu

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