We study the application of the Augmented Lagrangian Method to the solution of linear ill-posed problems. Previously, linear convergence rates with respect to the Bregman distance have been derived under the classical assumption of a standard source condition. Using the method of variational inequalities, we extend these results in this paper to convergence rates of lower order, both for the case of an a priori parameter choice and an a posteriori choice based on Morozov's discrepancy principle. In addition, our approach allows the derivation of convergence rates with respect to distance measures different from the Bregman distance. As a particular application, we consider sparsity promoting regularization, where we derive a range of conver...
This thesis deals with the construction and analysis of solution methods for a class of ill-posed op...
AbstractWe consider Tikhonov regularization of linear ill-posed problems with noisy data. The choice...
AbstractRegularized approximations to the solutions of ill-posed problems typically vary from over-s...
In this paper we propose a heuristic stopping rule of Hanke–Raus type for the regularization of line...
Abstract In the recent past the authors, with collaborators, have published convergence rate results...
The aim of this paper is to provide quantitative estimates for the minimizers of non-quadratic regu...
The book collects and contributes new results on the theory and practice of ill-posed inverse proble...
AbstractAfter a general discussion about convergence and convergence rates for regularization method...
Abstract. The Tikhonov regularization of linear ill-posed problems with an `1 penalty is considered....
The authors study parameter choice strategies for Tikhonov regularization of nonlinear ill-posed pro...
In this paper we analyze two regularization methods for nonlinear ill-posed problems. The first is a...
AbstractWe investigate a general class of regularization methods for ill-posed linear operator equat...
In many science and engineering applications, the discretization of linear ill-posed problems gives ...
We consider the solution of ill-posed inverse problems using regularization with tolerances. In part...
In this note some numerical experiments to illustration for conver-gence rates of regularized soluti...
This thesis deals with the construction and analysis of solution methods for a class of ill-posed op...
AbstractWe consider Tikhonov regularization of linear ill-posed problems with noisy data. The choice...
AbstractRegularized approximations to the solutions of ill-posed problems typically vary from over-s...
In this paper we propose a heuristic stopping rule of Hanke–Raus type for the regularization of line...
Abstract In the recent past the authors, with collaborators, have published convergence rate results...
The aim of this paper is to provide quantitative estimates for the minimizers of non-quadratic regu...
The book collects and contributes new results on the theory and practice of ill-posed inverse proble...
AbstractAfter a general discussion about convergence and convergence rates for regularization method...
Abstract. The Tikhonov regularization of linear ill-posed problems with an `1 penalty is considered....
The authors study parameter choice strategies for Tikhonov regularization of nonlinear ill-posed pro...
In this paper we analyze two regularization methods for nonlinear ill-posed problems. The first is a...
AbstractWe investigate a general class of regularization methods for ill-posed linear operator equat...
In many science and engineering applications, the discretization of linear ill-posed problems gives ...
We consider the solution of ill-posed inverse problems using regularization with tolerances. In part...
In this note some numerical experiments to illustration for conver-gence rates of regularized soluti...
This thesis deals with the construction and analysis of solution methods for a class of ill-posed op...
AbstractWe consider Tikhonov regularization of linear ill-posed problems with noisy data. The choice...
AbstractRegularized approximations to the solutions of ill-posed problems typically vary from over-s...