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The QLP Approximation to the Singular Value Decomposition

Published: 01 January 1999 Publication History

Abstract

In this paper we introduce a new decomposition called the pivoted QLP decomposition. It is computed by applying pivoted orthogonal triangularization to the columns of the matrix X in question to get an upper triangular factor R and then applying the same procedure to the rows of R to get a lower triangular matrix L. The diagonal elements of R are called the R-values of X; those of L are called the L-values. Numerical examples show that the L-values track the singular values of X with considerable fidelity---far better than the R-values. At a gap in the L-values the decomposition provides orthonormal bases of analogues of row, column, and null spaces provided of X. The decomposition requires no more than twice the work required for a pivoted QR decomposition. The computation of R and L can be interleaved, so that the computation can be terminated at any suitable point, which makes the decomposition especially suitable for low-rank determination problems. The interleaved algorithm also suggests a new, efficient 2-norm estimator.

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cover image SIAM Journal on Scientific Computing
SIAM Journal on Scientific Computing  Volume 20, Issue 4
1999
386 pages

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Society for Industrial and Applied Mathematics

United States

Publication History

Published: 01 January 1999

Author Tags

  1. 15A18
  2. 15A23
  3. 65F99

Author Tags

  1. singular value decomposition
  2. QLP decomposition
  3. pivoted QR decomposition
  4. rank determination

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