A note on the computation of the generalized cross-validation function for ill-conditioned least squares problems (Q760164)
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scientific article; zbMATH DE number 3883509
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | A note on the computation of the generalized cross-validation function for ill-conditioned least squares problems |
scientific article; zbMATH DE number 3883509 |
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A note on the computation of the generalized cross-validation function for ill-conditioned least squares problems (English)
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1984
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In solving the finite-dimensional regularization problem of the form \(\min (\| Kf-g\|^ 2+\mu^ 2\| Lf\|^ 2)\) one suitable choice for the regularization parameter \(\mu\) is given by the method of generalized cross-validation. In this method one has to compute trace (I- KM\({}_{\mu}^{-1}K^ T)\) with \(M_{}\mu =K^ TK+\mu^ 2I.\) Normally a singular value decomposition (SVD) of K is used for this purpose. The author uses instead a bidiagonalization algorithm for computing \(K=U\left( \begin{matrix} B\\ 0\end{matrix} \right)V^ T\) with U, V orthogonal and B bidiagonal. Then the cross-validation function V(\(\mu)\) can be computed in O(n) operations. Execution time tests demonstrate, that this algorithm is about three times faster than the SVD-algorithm. But for this test the SVD of LINPACK is used, not the product form-SVD proposed by \textit{J. J. M. Cuppen} [SIAM J. Sci. Stat. Comput. 4, 216-222 (1983; Zbl 0517.65017)], which should give a considerable speed-up.
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least squares
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ill-condition
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finite-dimensional regularization
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method of generalized cross-validation
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singular value decomposition
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bidiagonalization algorithm
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Execution time tests
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0.9004085
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0.8998569
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0.8996502
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0.8828545
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0.87812245
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0.8726425
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0.86714053
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0.86661446
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