AbstractKrylov subspace methods have been recently considered to solve singular linear systems Ax=b. In this paper, we derive the necessary and sufficient conditions guaranteeing that a Krylov subspace method converges to a vector ADb+Px0, where AD is the Drazin inverse of A and P is the projection P=I−ADA. Let k be the index of A. We further show that ADb+Px0,x0∈R(Ak−1)+N(A), is a generalized least-squares solution of Ax=b in R(Ak)+N(A). Finally, we present the convergence bounds for the quasi-minimal residual algorithm (QMR) and transpose-free quasi-minimal residual algorithm (TFQMR). The index k of A in this paper can be arbitrary, which extends to the main results of Freund and Hochbruck (Numer. Linear Algebra Appl. 1 (1994) 403–420) th...
The conjugate gradient and minimum residual methods for self-adjoint problems in Hilbert space are c...
Abstract. There is a class of linear problems for which the computation of the matrix-vector product...
Abstract. There is a class of linear problems for which the computation of the matrix-vector product...
AbstractIn the present paper, we give some convergence results of the global minimal residual method...
AbstractConsider the linear system Ax=b, where A∈CN×N is a singular matrix. In the present work we p...
A more fundamental concept than the minimal residual method is proposed in this paper to solve an n-...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
The convergence problem of Krylov subspace methods, e.g. FOM, GMRES, GCR and many others, for solvin...
AbstractConsider the linear system Ax=b, where A∈CN×N is a singular matrix. In the present work we p...
In this paper we consider the problem of approximating the solution of infinite linear systems, fini...
The conjugate gradient and minimum residual methods for self-adjoint problems in Hilbert space are c...
Abstract. There is a class of linear problems for which the computation of the matrix-vector product...
Abstract. There is a class of linear problems for which the computation of the matrix-vector product...
AbstractIn the present paper, we give some convergence results of the global minimal residual method...
AbstractConsider the linear system Ax=b, where A∈CN×N is a singular matrix. In the present work we p...
A more fundamental concept than the minimal residual method is proposed in this paper to solve an n-...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
In most practical cases, the convergence of the GMRES method applied to a linear algebraic system Ax...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
The convergence problem of Krylov subspace methods, e.g. FOM, GMRES, GCR and many others, for solvin...
AbstractConsider the linear system Ax=b, where A∈CN×N is a singular matrix. In the present work we p...
In this paper we consider the problem of approximating the solution of infinite linear systems, fini...
The conjugate gradient and minimum residual methods for self-adjoint problems in Hilbert space are c...
Abstract. There is a class of linear problems for which the computation of the matrix-vector product...
Abstract. There is a class of linear problems for which the computation of the matrix-vector product...