Preconditioners for least squares problems by LU factorization (Q1292262)
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scientific article; zbMATH DE number 1306002
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Preconditioners for least squares problems by LU factorization |
scientific article; zbMATH DE number 1306002 |
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Preconditioners for least squares problems by LU factorization (English)
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21 June 1999
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The authors consider the problem of finding suitable preconditioners in the iterative solution of least squares problems \(\min\| Ax-b\|_2\) where the rectangular matrix \(A\) is large and sparse. Two basic conjugate gradient methods using an appropriate submatrix \(A_1\) as a preconditioner are proposed and bounds for the rate of convergence are derived. It is shown how one of these methods can be adapted to solve a generalized least squares problem. An algorithm for selecting \(n\) linearly independent rows from \(A\) to form \(A_1\) is outlined. The methods are tested on some sparse rectangular matrices from the Harwell-Boeing sparse matrix collection. It follows from the comparison results that the preconditioned conjugate method is much better than the conjugate gradient method.
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linear least squares
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conjugate gradient method
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preconditioners
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convergence
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algorithm
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sparse rectangular matrices
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0.93514454
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0.93312764
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0.91980547
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0.9169338
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0.91594553
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0.91511965
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0.91349995
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0.9107773
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