Applicable Analysis | 2021

On regularization methods based on dynamic programming techniques

 
 

Abstract


In this article, we investigate the connection between regularization theory for inverse problems and dynamic programming theory. This is done by developing two new regularization methods, based on dynamic programming techniques. The aim of these methods is to obtain stable approximations to the solution of linear inverse ill-posed problems. We follow two different approaches and derive a continuous and a discrete regularization method. Regularization properties for both methods are proved as well as rates of convergence. A numerical benchmark problem concerning integral operators with convolution kernels is used to illustrate the theoretical results.

Volume 86
Pages 611 - 632
DOI 10.1080/00036810701354953
Language English
Journal Applicable Analysis

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