AbstractThe total least squares (TLS) method is a successful approach for linear problems when not only the right-hand side but the system matrix is also contaminated by some noise. For ill-posed TLS problems regularization is necessary to stabilize the computed solution. In this paper we present a new approach for computing an approximate solution of the Tikhonov-regularized large-scale total least-squares problem. An iterative method is proposed which solves a convergent sequence of projected linear systems and thereby builds up a highly suitable search space. The focus is on efficient implementation with particular emphasis on the reuse of information
AbstractIn this contribution a variation of Golub/Hansen/O’Leary’s Total Least-Squares (TLS) regular...
Many problems in science and engineering give rise to linear systems of equations that are commonly ...
Mastronardi, Lemmerling, and van Huffel presented an algorithm for solving a total least squares pr...
AbstractThe total least squares (TLS) method is a successful approach for linear problems when not o...
Discretizations of inverse problems lead to systems of linear equations with a highly ill-condition...
The total least squares (TLS) method is a successful approach for linear problems if both the matrix...
AbstractIn this work, we study and analyze the regularized weighted total least squares (RWTLS) form...
. Discretizations of inverse problems lead to systems of linear equations with a highly ill-conditio...
Discretizations of inverse problems lead to systems of linear equations with a highly ill-conditione...
In the first part of the thesis we review basic knowledge of regularized least squares problems and ...
Recent advances in total least squares approaches for solving various errors-in-variables modeling p...
Tikhonov regularization is a powerful tool for the solution of ill-posed linear systems and linear l...
We study weighted total least squares problems on infinite dimensional spaces. We present some neces...
AbstractTikhonov regularization for large-scale linear ill-posed problems is commonly implemented by...
The total least squares (TLS) method is a successful approach for linear problems if both the matrix...
AbstractIn this contribution a variation of Golub/Hansen/O’Leary’s Total Least-Squares (TLS) regular...
Many problems in science and engineering give rise to linear systems of equations that are commonly ...
Mastronardi, Lemmerling, and van Huffel presented an algorithm for solving a total least squares pr...
AbstractThe total least squares (TLS) method is a successful approach for linear problems when not o...
Discretizations of inverse problems lead to systems of linear equations with a highly ill-condition...
The total least squares (TLS) method is a successful approach for linear problems if both the matrix...
AbstractIn this work, we study and analyze the regularized weighted total least squares (RWTLS) form...
. Discretizations of inverse problems lead to systems of linear equations with a highly ill-conditio...
Discretizations of inverse problems lead to systems of linear equations with a highly ill-conditione...
In the first part of the thesis we review basic knowledge of regularized least squares problems and ...
Recent advances in total least squares approaches for solving various errors-in-variables modeling p...
Tikhonov regularization is a powerful tool for the solution of ill-posed linear systems and linear l...
We study weighted total least squares problems on infinite dimensional spaces. We present some neces...
AbstractTikhonov regularization for large-scale linear ill-posed problems is commonly implemented by...
The total least squares (TLS) method is a successful approach for linear problems if both the matrix...
AbstractIn this contribution a variation of Golub/Hansen/O’Leary’s Total Least-Squares (TLS) regular...
Many problems in science and engineering give rise to linear systems of equations that are commonly ...
Mastronardi, Lemmerling, and van Huffel presented an algorithm for solving a total least squares pr...