Regularization is typically based on the choice of some parametric family of nearby solutions, and the choice of this family is a task in itself. Then, a suitable parameter must be chosen in order to find an approximation of good quality. We focus on the second task. There exist deterministic and stochastic models for describing noise and solutions in inverse problems. We will establish a unified framework for treating different settings for the analysis of inverse problems, which allows us to prove the convergence and optimality of parameter choice schemes based on minimization in a generic way. We show that the well known quasi-optimality criterion falls in this class. Furthermore we present a new parameter choice method and prove its con...
We study the efficiency of the approximate solution of ill-posed problems, based on discretized nois...
Estimating modeling parameters based on a prescribed optimization target requires to solve an invers...
We consider generalized inverses and linear ill-posed problems in Banach spaces, and the concept of ...
AbstractRegularization is typically based on the choice of some parametric family of nearby solution...
In this paper we establish a generalized framework, which allows to prove convergenence and optimali...
We analyze some parameter choice strategies in regularization of inverse problems, in particular, th...
The regularization of ill-posed systems of equations is carried out by corrections of the data or th...
We study a possiblity to use the structure of the regularization error for a posteriori choice of th...
AbstractWe consider Tikhonov regularization of linear ill-posed problems with noisy data. The choice...
We study empirical and hierarchical Bayes approaches to the problem of estimating an infinite-dimens...
AbstractWe investigate a general class of regularization methods for ill-posed linear operator equat...
Many inverse problems arising in practice can be modelled in the form of an operator equation (1.1) ...
SIIMS 2020 - 30 pagesThis paper presents a detailed theoretical analysis of the three stochastic app...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
Inverse optimization refers to the inference of unknown parameters of an optimization problem based ...
We study the efficiency of the approximate solution of ill-posed problems, based on discretized nois...
Estimating modeling parameters based on a prescribed optimization target requires to solve an invers...
We consider generalized inverses and linear ill-posed problems in Banach spaces, and the concept of ...
AbstractRegularization is typically based on the choice of some parametric family of nearby solution...
In this paper we establish a generalized framework, which allows to prove convergenence and optimali...
We analyze some parameter choice strategies in regularization of inverse problems, in particular, th...
The regularization of ill-posed systems of equations is carried out by corrections of the data or th...
We study a possiblity to use the structure of the regularization error for a posteriori choice of th...
AbstractWe consider Tikhonov regularization of linear ill-posed problems with noisy data. The choice...
We study empirical and hierarchical Bayes approaches to the problem of estimating an infinite-dimens...
AbstractWe investigate a general class of regularization methods for ill-posed linear operator equat...
Many inverse problems arising in practice can be modelled in the form of an operator equation (1.1) ...
SIIMS 2020 - 30 pagesThis paper presents a detailed theoretical analysis of the three stochastic app...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
Inverse optimization refers to the inference of unknown parameters of an optimization problem based ...
We study the efficiency of the approximate solution of ill-posed problems, based on discretized nois...
Estimating modeling parameters based on a prescribed optimization target requires to solve an invers...
We consider generalized inverses and linear ill-posed problems in Banach spaces, and the concept of ...