AbstractLinear Least Squares (LLS) problems are particularly difficult to solve because they are frequently ill-conditioned, and involve large quantities of data. Ill-conditioned LLS problems are commonly seen in mathematics and geosciences, where regularization algorithms are employed to seek optimal solutions. For many problems, even with the use of regularization algorithms it may be impossible to obtain an accurate solution. Riley and Golub suggested an iterative scheme for solving LLS problems. For the early iteration algorithm, it is difficult to improve the well-conditioned perturbed matrix and accelerate the convergence at the same time. Aiming at this problem, self-adaptive iteration algorithm (SAIA) is proposed in this paper for s...
AbstractStraightforward solution of discrete ill-posed least-squares problems with error-contaminate...
Discretizations of inverse problems lead to systems of linear equations with a highly ill-condition...
This work considers some theoretical and computational aspects of the recent paper (Buccini et al., ...
AbstractLinear Least Squares (LLS) problems are particularly difficult to solve because they are fre...
In Geomatics, the method of least squares is commonly used to solve the systems of observation equat...
AbstractThis paper is concerned with iterative solution methods for large linear systems of equation...
New preconditioning strategies for solving m × n overdetermined large and sparse linear least squar...
This report treats numerical methods for highly nonlinear least squares problems for which procedura...
International audienceWe propose new iterative algorithms for solving a system of linear equations, ...
AbstractThis paper presents the first results to combine two theoretically sound methods (spectral p...
AbstractIn the existing Lanczos algorithms for solving systems of linear equations,the estimate for ...
Solving the normal equation systems arising from least-squares problems can be challenging because ...
We discuss the solution of numerically ill-posed overdetermined systems of equations using Tikhonov ...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
Caption title.Includes bibliographical references (p. 15-16).Supported by the NSF. 9300494-DMIby Dim...
AbstractStraightforward solution of discrete ill-posed least-squares problems with error-contaminate...
Discretizations of inverse problems lead to systems of linear equations with a highly ill-condition...
This work considers some theoretical and computational aspects of the recent paper (Buccini et al., ...
AbstractLinear Least Squares (LLS) problems are particularly difficult to solve because they are fre...
In Geomatics, the method of least squares is commonly used to solve the systems of observation equat...
AbstractThis paper is concerned with iterative solution methods for large linear systems of equation...
New preconditioning strategies for solving m × n overdetermined large and sparse linear least squar...
This report treats numerical methods for highly nonlinear least squares problems for which procedura...
International audienceWe propose new iterative algorithms for solving a system of linear equations, ...
AbstractThis paper presents the first results to combine two theoretically sound methods (spectral p...
AbstractIn the existing Lanczos algorithms for solving systems of linear equations,the estimate for ...
Solving the normal equation systems arising from least-squares problems can be challenging because ...
We discuss the solution of numerically ill-posed overdetermined systems of equations using Tikhonov ...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
Caption title.Includes bibliographical references (p. 15-16).Supported by the NSF. 9300494-DMIby Dim...
AbstractStraightforward solution of discrete ill-posed least-squares problems with error-contaminate...
Discretizations of inverse problems lead to systems of linear equations with a highly ill-condition...
This work considers some theoretical and computational aspects of the recent paper (Buccini et al., ...