Typical inverse problems are ill-posed which frequently leads to difficulties in calculatingnumerical solutions. A common approximation method to solve ill-posed inverse problemsis iterated Tikhonov-Lavrentiev regularization.We examine iterated Tikhonov-Lavrentiev regularization and show that, in the casethat regularity properties are not globally satisfied, certain projections of the error converge faster than the theoretical predictions of the global error. We also explore the sensitivity of iterated Tikhonov regularization to the choice of the regularization parameter. We show that by calculating higher order sensitivities we improve the accuracy. We present a simple to implement algorithm that calculates the iterated Tikhonov updates an...
AbstractWe present three cubically convergent methods for choosing the regularization parameters in ...
Multiplicative regularization solves a linear inverse problem by minimizing the product of the norm ...
A convergence rate is established for nonstationary iterated Tikhonov regularization, applied to ill...
Typical inverse problems are ill-posed which frequently leads to difficulties in calculatingnumerica...
Typical inverse problems are ill-posed which frequently leads to difficulties in calculatingnumerica...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
In this paper we present an iterative method for the minimization of the Tikhonov regularization fu...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
During the past the convergence analysis for linear statistical inverse problems has mainly focused ...
When iterative methods are employed as regularizers of inverse problems, a main issue is the trade-o...
AbstractWe present three cubically convergent methods for choosing the regularization parameters in ...
Multiplicative regularization solves a linear inverse problem by minimizing the product of the norm ...
A convergence rate is established for nonstationary iterated Tikhonov regularization, applied to ill...
Typical inverse problems are ill-posed which frequently leads to difficulties in calculatingnumerica...
Typical inverse problems are ill-posed which frequently leads to difficulties in calculatingnumerica...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
In this paper we present an iterative method for the minimization of the Tikhonov regularization fu...
Ill-posed inverse problems arise in many fields of science and engineering. The ill-conditioning and...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
During the past the convergence analysis for linear statistical inverse problems has mainly focused ...
When iterative methods are employed as regularizers of inverse problems, a main issue is the trade-o...
AbstractWe present three cubically convergent methods for choosing the regularization parameters in ...
Multiplicative regularization solves a linear inverse problem by minimizing the product of the norm ...
A convergence rate is established for nonstationary iterated Tikhonov regularization, applied to ill...