AbstractDue to the principle of regularization by restricting the number of degrees of freedom, truncating the Cholesky factorization of a symmetric positive definite matrix can be expected to have a stabilizing effect. Based on this idea, we consider four different approaches for regularizing ill-posed linear operator equations. Convergence in the noise free case as well as—with an appropriate a priori truncation rule—in the situation of noisy data is analyzed. Moreover, we propose an a posteriori truncation rule and characterize its convergence. Numerical tests illustrate the theoretical results. Both analysis and computations suggest one of the four variants to be favorable to the others
The paper concerns conditioning aspects of finite dimensional problems arisen when the Tikhonov regu...
In this paper we analyze two regularization methods for nonlinear ill-posed problems. The first is a...
Let the positive definite matrix A have a Cholesky factorization A = RTR. For a given vector x suppo...
AbstractDue to the principle of regularization by restricting the number of degrees of freedom, trun...
We construct with the aid of regularizing filters a new class of improved regularization methods, ca...
We construct with the aid of regularizing filters a new class of improved regularization methods, ca...
The advent of the computer had forced the application of mathematics to all branches of human endeav...
AbstractWe investigate a general class of regularization methods for ill-posed linear operator equat...
The straightforward solution of discrete ill-posed linear systems of equations or least-squares prob...
Abstract. Straightforward solution of discrete ill-posed linear systems of equations or least-square...
This thesis is a contribution to the field of ill-posed inverse problems . During the last ten year...
Scattered data interpolation using Radial Basis Functions involves solving an ill-conditioned symmet...
In this work, we introduce and investigate a class of matrix-free regularization techniques for disc...
Abstract. Truncated singular value decomposition (TSVD) is a popular method for solving linear discr...
The stable approximate solution of ill‐posed linear operator equations in Hilbert spaces requires re...
The paper concerns conditioning aspects of finite dimensional problems arisen when the Tikhonov regu...
In this paper we analyze two regularization methods for nonlinear ill-posed problems. The first is a...
Let the positive definite matrix A have a Cholesky factorization A = RTR. For a given vector x suppo...
AbstractDue to the principle of regularization by restricting the number of degrees of freedom, trun...
We construct with the aid of regularizing filters a new class of improved regularization methods, ca...
We construct with the aid of regularizing filters a new class of improved regularization methods, ca...
The advent of the computer had forced the application of mathematics to all branches of human endeav...
AbstractWe investigate a general class of regularization methods for ill-posed linear operator equat...
The straightforward solution of discrete ill-posed linear systems of equations or least-squares prob...
Abstract. Straightforward solution of discrete ill-posed linear systems of equations or least-square...
This thesis is a contribution to the field of ill-posed inverse problems . During the last ten year...
Scattered data interpolation using Radial Basis Functions involves solving an ill-conditioned symmet...
In this work, we introduce and investigate a class of matrix-free regularization techniques for disc...
Abstract. Truncated singular value decomposition (TSVD) is a popular method for solving linear discr...
The stable approximate solution of ill‐posed linear operator equations in Hilbert spaces requires re...
The paper concerns conditioning aspects of finite dimensional problems arisen when the Tikhonov regu...
In this paper we analyze two regularization methods for nonlinear ill-posed problems. The first is a...
Let the positive definite matrix A have a Cholesky factorization A = RTR. For a given vector x suppo...