Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and the big dimension make the task of numerically solving this kind of problems very challenging. In this thesis we construct several algorithms for solving ill-posed inverse problems. Starting from the classical Tikhonov regularization method we develop iterative methods that enhance the performances of the originating method. In order to ensure the accuracy of the constructed algorithms we insert a priori knowledge on the exact solution and empower the regularization term. By exploiting the structure of the problem we are also able to achieve fast computation even when the size of the problem becomes very big. We construct algorithms that en...
We shall investigate randomized algorithms for solving large-scale linear inverse problems with gene...
AbstractIn this paper we discuss a relation between Learning Theory and Regularization of linear ill...
Inverse problems occur frequently in science and technology, whenever we need to infer causes from e...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
Typical inverse problems are ill-posed which frequently leads to difficulties in calculatingnumerica...
The aim of this thesis is to study hybrid methods for solving ill-posed linear inverse problems corr...
In this paper we present an iterative method for the minimization of the Tikhonov regularization fun...
In this paper, we propose a new strategy for a priori choice of reg-ularization parameters in Tikhon...
Discrete ill-posed inverse problems arise in many areas of science and engineering. Their solutions ...
Discretization of linear inverse problems generally gives rise to very ill-conditioned linear system...
We consider the solution of ill-posed inverse problems using regularization with tolerances. In part...
International audienceWe study a non-linear statistical inverse problem, where we observe the noisy ...
In this paper we present an iterative method for the minimization of the Tikhonov regularization fu...
AbstractDiscretization of linear inverse problems generally gives rise to very ill-conditioned linea...
Tikhonov regularization is one of the most popular approaches to solve discrete ill-posed problems w...
We shall investigate randomized algorithms for solving large-scale linear inverse problems with gene...
AbstractIn this paper we discuss a relation between Learning Theory and Regularization of linear ill...
Inverse problems occur frequently in science and technology, whenever we need to infer causes from e...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
Typical inverse problems are ill-posed which frequently leads to difficulties in calculatingnumerica...
The aim of this thesis is to study hybrid methods for solving ill-posed linear inverse problems corr...
In this paper we present an iterative method for the minimization of the Tikhonov regularization fun...
In this paper, we propose a new strategy for a priori choice of reg-ularization parameters in Tikhon...
Discrete ill-posed inverse problems arise in many areas of science and engineering. Their solutions ...
Discretization of linear inverse problems generally gives rise to very ill-conditioned linear system...
We consider the solution of ill-posed inverse problems using regularization with tolerances. In part...
International audienceWe study a non-linear statistical inverse problem, where we observe the noisy ...
In this paper we present an iterative method for the minimization of the Tikhonov regularization fu...
AbstractDiscretization of linear inverse problems generally gives rise to very ill-conditioned linea...
Tikhonov regularization is one of the most popular approaches to solve discrete ill-posed problems w...
We shall investigate randomized algorithms for solving large-scale linear inverse problems with gene...
AbstractIn this paper we discuss a relation between Learning Theory and Regularization of linear ill...
Inverse problems occur frequently in science and technology, whenever we need to infer causes from e...