We present a general analytical model which describes the superlinear convergence of Krylov subspace methods. We take an invariant subspace approach, so that our results apply also to inexact methods, and to non-diagonalizable matrices. Thus, we provide a unified treatment of the superlinear convergence of GMRES, Conjugate Gradients, block versions of these, and inexact subspace methods. Numerical experiments illustrate the bounds obtained
SIGLEAvailable from British Library Document Supply Centre-DSC:D210289 / BLDSC - British Library Doc...
In this paper we analyze the convergence of some commonly used Krylov subspace methods for computing...
When solving PDE's by means of numerical methods one often has to deal with large systems of linear ...
The conjugate gradient and minimum residual methods for self-adjoint problems in Hilbert space are c...
The text deals with the understanding of the convergence behaviour of the GMRES method. The first pa...
Abstract. There is a class of linear problems for which the computation of the matrix-vector product...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
The theory of the convergence of Krylov subspace iterations for linear systems of equations (conjuga...
AbstractKrylov subspace methods have been recently considered to solve singular linear systems Ax=b....
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
The convergence problem of Krylov subspace methods, e.g. FOM, GMRES, GCR and many others, for solvin...
We provide a general framework for the understanding of Inexact Krylov subspace methods for the solu...
AbstractIn the present paper, we give some convergence results of the global minimal residual method...
AbstractGMRES is a rather popular iterative method for the solution of nonsingular nonsymmetric line...
Eigenvalues with the eigenvector condition number, the field of values, and pseudospectra have all b...
SIGLEAvailable from British Library Document Supply Centre-DSC:D210289 / BLDSC - British Library Doc...
In this paper we analyze the convergence of some commonly used Krylov subspace methods for computing...
When solving PDE's by means of numerical methods one often has to deal with large systems of linear ...
The conjugate gradient and minimum residual methods for self-adjoint problems in Hilbert space are c...
The text deals with the understanding of the convergence behaviour of the GMRES method. The first pa...
Abstract. There is a class of linear problems for which the computation of the matrix-vector product...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
The theory of the convergence of Krylov subspace iterations for linear systems of equations (conjuga...
AbstractKrylov subspace methods have been recently considered to solve singular linear systems Ax=b....
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
The convergence problem of Krylov subspace methods, e.g. FOM, GMRES, GCR and many others, for solvin...
We provide a general framework for the understanding of Inexact Krylov subspace methods for the solu...
AbstractIn the present paper, we give some convergence results of the global minimal residual method...
AbstractGMRES is a rather popular iterative method for the solution of nonsingular nonsymmetric line...
Eigenvalues with the eigenvector condition number, the field of values, and pseudospectra have all b...
SIGLEAvailable from British Library Document Supply Centre-DSC:D210289 / BLDSC - British Library Doc...
In this paper we analyze the convergence of some commonly used Krylov subspace methods for computing...
When solving PDE's by means of numerical methods one often has to deal with large systems of linear ...