It is widely believed that Krylov subspace iterative methods are better than Chebyshev semi-iterative methods. When the solution of a linear system with a symmetric and positive definite coefficient matrix is required then the Conjugate Gradient method will compute the optimal approximate solution from the appropriate Krylov subspace, that is, it will implicitly compute the optimal polynomial. Hence a semi-iterative method, which requires eigenvalue bounds and computes an explicit polynomial, must, for just a little less computational work, give an inferior result. In this manuscript we identify a specific situation in the context of preconditioning when the Chebyshev semi-iterative method is the method of choice since it has properties whi...
When simulating a mechanism from science or engineering, or an industrial process, one is frequently...
By considering Krylov subspace methods in nonstandard inner products, we develop in this thesis new ...
Iterative methods for solving large-scale linear systems have been gaining popularity in many areas ...
It is widely believed that Krylov subspace iterative methods are better than Chebyshev semi-iterativ...
AbstractThe approximate solutions in standard iteration methods for linear systems Ax=b, with A an n...
We revisit real-valued preconditioned iterative methods for the solution of complex linear systems, ...
Title: Krylov subspace methods: Theory, applications and interconnections Author: Tomáš Gergelits De...
138 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1988.The solution of a linear syst...
In this thesis the application of preconditioning to the Chebyshev iterative method is presented. La...
In these lecture notes an introduction to Krylov subspace solvers and preconditioners is presented. ...
We consider the problem of solving a linear system Ax = b when A is nearly symmetric and when the sy...
3noIn this note, we exploit polynomial preconditioners for the conjugate gradient method to solve la...
Title: Analysis of Krylov subspace methods Author: Tomáš Gergelits Department: Department of Numeric...
This report presents preconditioning techniques for the conjugate gradient method (CG), an iterative...
This report presents preconditioning techniques for the conjugate gradient method (CG), an iterative...
When simulating a mechanism from science or engineering, or an industrial process, one is frequently...
By considering Krylov subspace methods in nonstandard inner products, we develop in this thesis new ...
Iterative methods for solving large-scale linear systems have been gaining popularity in many areas ...
It is widely believed that Krylov subspace iterative methods are better than Chebyshev semi-iterativ...
AbstractThe approximate solutions in standard iteration methods for linear systems Ax=b, with A an n...
We revisit real-valued preconditioned iterative methods for the solution of complex linear systems, ...
Title: Krylov subspace methods: Theory, applications and interconnections Author: Tomáš Gergelits De...
138 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1988.The solution of a linear syst...
In this thesis the application of preconditioning to the Chebyshev iterative method is presented. La...
In these lecture notes an introduction to Krylov subspace solvers and preconditioners is presented. ...
We consider the problem of solving a linear system Ax = b when A is nearly symmetric and when the sy...
3noIn this note, we exploit polynomial preconditioners for the conjugate gradient method to solve la...
Title: Analysis of Krylov subspace methods Author: Tomáš Gergelits Department: Department of Numeric...
This report presents preconditioning techniques for the conjugate gradient method (CG), an iterative...
This report presents preconditioning techniques for the conjugate gradient method (CG), an iterative...
When simulating a mechanism from science or engineering, or an industrial process, one is frequently...
By considering Krylov subspace methods in nonstandard inner products, we develop in this thesis new ...
Iterative methods for solving large-scale linear systems have been gaining popularity in many areas ...