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A bidiagonalization algorithm for solving large and sparse ill-posed systems of linear equations - MaRDI portal

A bidiagonalization algorithm for solving large and sparse ill-posed systems of linear equations (Q1111337)

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scientific article; zbMATH DE number 4076466
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A bidiagonalization algorithm for solving large and sparse ill-posed systems of linear equations
scientific article; zbMATH DE number 4076466

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    A bidiagonalization algorithm for solving large and sparse ill-posed systems of linear equations (English)
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    1988
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    A bidiagonalization (Lanczos type) method is used for solving regularized least squares problems of the form \(\| b-Ax\|^ 2_ 2+\mu^ 2\| x\|^ 2_ 2\) or \(\| b-Ax\|^ 2_ 2+\mu^ 2\| Bx\|^ 2_ 2\to Min.\) with a large sparse \(m\times n\)-matrix A and some (n-p)\(\times n\)-matrix B. The regularization parameter is determined using cross-validation. Author's conclusion is that the suggested method is more flexible and robust than the conjugate gradient method.
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    Lanczos bidiagonalization
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    ill-conditioned systems
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    comparison of methods
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    least squares problems
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    regularization
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    cross-validation
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    conjugate gradient method
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