Statistical regularization of inverse problems (Q2726317)
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scientific article; zbMATH DE number 1620867
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Statistical regularization of inverse problems |
scientific article; zbMATH DE number 1620867 |
Statements
17 July 2001
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Fredholm integral equations
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Backus-Gilbert method
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reproduction kernels
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wavelets
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Tikhonov regularization
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statistical regularization
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inverse problems
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ill-posed problems
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statistical measures of performance
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averaging kernels
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singular value decomposition
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wavelet
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Statistical regularization of inverse problems (English)
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This paper determines a physically meaningful solution using prior information. The author presents a general framework for studying linear inverse problems based on statistical measures of performance, averaging kernels and reproducing kernel Hilbert spaces. He uses discrete Fredholm integral equations as examples of ill-posed inverse problems, looks for ways to incorporate prior information into the inverse problem, and presents methods based on roughness, singular value decomposition, and wavelet denoting. NEWLINENEWLINENEWLINEThese methods are similar in that they reduce to estimating coefficients of the unknown function with respect to a basis and they depend on tuning parameters. They differ in the criteria used to select the class of functions for the singular values and a basis for this class.
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