AbstractUsually generalized least squares problems are solved by transforming them into regular least squares problems which can then be solved by well-known numerical methods. However, this approach is not very effective in some cases and, besides, is very expensive for large scale problems. In 1979, Paige suggested another approach which consists of solving an equivalent equality-constrained least squares problem by the orthogonal decomposition, the BNP algorithm or the James' implicit nullspace iterative methods. In this paper, we present some new developments of the numerical methods, for example, 2-cycle SOR method and preconditioned conjugate gradient method, for generalized least squares problems. Some numerical comparisons are inclu...
Abstract In this project, we study the conjugate gradient method used to solve nonlinear least-squar...
AbstractThe Conjugate Gradient Squared (CGS) is an iterative method for solving nonsymmetric linear ...
We derive a conjugate-gradient type algorithm to produce approximate least-squares (LS) solutions fo...
AbstractA variant of the preconditioned conjugate gradient method to solve generalized least squares...
In a recent paper [4], Li et al. gave a generalized successive overrelaxation (GSCR) method for the ...
In a recent paper [4], Li et al. gave a generalized successive overrelaxation (GSOR) method for the ...
Abstract. The generalized linear least squares problem is treated here as a linear least squares pro...
AbstractWe compare two recently proposed block-SOR methods for the solution of large least squares p...
AbstractWe propose to precondition the GMRES method by using the incomplete Givens orthogonalization...
In this paper, we present a brief survey of methods for solving nonlinear least-squares problems. We...
Abstract. Iterative methods are often suitable for solving least-squares problems min kAx, bk2, wher...
AbstractThe SOR and CG methods are considered for least squares problems. The SOR and CG methods are...
The aim of this paper is to expand the applicability of four iterative methods for solving nonlinear...
We review the development and extensions of the classical total least squares method and describe al...
We review the development and extensions of the classical total least squares method and describe al...
Abstract In this project, we study the conjugate gradient method used to solve nonlinear least-squar...
AbstractThe Conjugate Gradient Squared (CGS) is an iterative method for solving nonsymmetric linear ...
We derive a conjugate-gradient type algorithm to produce approximate least-squares (LS) solutions fo...
AbstractA variant of the preconditioned conjugate gradient method to solve generalized least squares...
In a recent paper [4], Li et al. gave a generalized successive overrelaxation (GSCR) method for the ...
In a recent paper [4], Li et al. gave a generalized successive overrelaxation (GSOR) method for the ...
Abstract. The generalized linear least squares problem is treated here as a linear least squares pro...
AbstractWe compare two recently proposed block-SOR methods for the solution of large least squares p...
AbstractWe propose to precondition the GMRES method by using the incomplete Givens orthogonalization...
In this paper, we present a brief survey of methods for solving nonlinear least-squares problems. We...
Abstract. Iterative methods are often suitable for solving least-squares problems min kAx, bk2, wher...
AbstractThe SOR and CG methods are considered for least squares problems. The SOR and CG methods are...
The aim of this paper is to expand the applicability of four iterative methods for solving nonlinear...
We review the development and extensions of the classical total least squares method and describe al...
We review the development and extensions of the classical total least squares method and describe al...
Abstract In this project, we study the conjugate gradient method used to solve nonlinear least-squar...
AbstractThe Conjugate Gradient Squared (CGS) is an iterative method for solving nonsymmetric linear ...
We derive a conjugate-gradient type algorithm to produce approximate least-squares (LS) solutions fo...