AbstractTikhonov regularization for large-scale linear ill-posed problems is commonly implemented by determining a partial Lanczos bidiagonalization of the matrix of the given system of equations. This paper explores the possibility of instead computing a partial Arnoldi decomposition of the given matrix. Computed examples illustrate that this approach may require fewer matrix–vector product evaluations and, therefore, less arithmetic work. Moreover, the proposed range-restricted Arnoldi–Tikhonov regularization method does not require the adjoint matrix and, hence, is convenient to use for problems for which the adjoint is difficult to evaluate
This paper introduces a new strategy for setting the regularization parameter when solving large-sca...
In the framework of iterative regularization techniques for large-scale linear ill-posed problems, t...
In the framework of iterative regularization techniques for large-scale linear ill-posed problems, t...
AbstractTikhonov regularization for large-scale linear ill-posed problems is commonly implemented by...
Abstract. Large linear discrete ill-posed problems with contaminated data are often solved with the ...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
This paper is devoted to the numerical solution of large-scale linear ill-posed systems. A multileve...
AbstractFor the solution of full-rank ill-posed linear systems a new approach based on the Arnoldi a...
For the solution of full-rank ill-posed linear systems a new approach based on the Arnoldi algorithm...
For the solution of full-rank ill-posed linear systems a new approach based on the Arnoldi algorithm...
This paper introduces a new strategy for setting the regularization parameter when solving large-sca...
This paper introduces a new strategy for setting the regularization parameter when solving large-sca...
In the framework of iterative regularization techniques for large-scale linear ill-posed problems, t...
In the framework of iterative regularization techniques for large-scale linear ill-posed problems, t...
AbstractTikhonov regularization for large-scale linear ill-posed problems is commonly implemented by...
Abstract. Large linear discrete ill-posed problems with contaminated data are often solved with the ...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
Large linear discrete ill-posed problems with contaminated data are often solved with the aid of Tik...
This paper is devoted to the numerical solution of large-scale linear ill-posed systems. A multileve...
AbstractFor the solution of full-rank ill-posed linear systems a new approach based on the Arnoldi a...
For the solution of full-rank ill-posed linear systems a new approach based on the Arnoldi algorithm...
For the solution of full-rank ill-posed linear systems a new approach based on the Arnoldi algorithm...
This paper introduces a new strategy for setting the regularization parameter when solving large-sca...
This paper introduces a new strategy for setting the regularization parameter when solving large-sca...
In the framework of iterative regularization techniques for large-scale linear ill-posed problems, t...
In the framework of iterative regularization techniques for large-scale linear ill-posed problems, t...