A variety of block Krylov subspace methods have been successfully developed for linear systems and matrix equations. The application of block Krylov methods to compute matrix functions is, however, less established, despite the growing prevalence of matrix functions in scientific computing. Of particular importance is the evaluation of a matrix function on not just one but multiple vectors. The main contribution of this paper is a class of efficient block Krylov subspace methods tailored precisely to this task. With the full orthogonalization method (FOM) for linear systems forming the backbone of our theory, the resulting methods are referred to as B(FOM)2: block FOM for functions of matrices. Many other important results are obtained in t...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
In this paper we analyze the convergence of some commonly used Krylov subspace methods for computing...
A variety of block Krylov subspace methods have been successfully developed for linear systems and m...
We analyze an expansion of the generalized block Krylov subspace framework of [Electron.\ Trans.\ Nu...
We show how the Arnoldi algorithm for approximating a function of a matrix times a vector can be res...
AbstractA new implementation of restarted Krylov subspace methods for evaluating f(A)b for a functio...
AbstractA new implementation of restarted Krylov subspace methods for evaluating f(A)b for a functio...
MATLAB data sets used for numerical tests in A. Frommer, K. Lund, and D. B. Szyld. Block Krylov sub...
Abstract. For large square matrices A and functions f, the numerical approximation of the action of ...
Abstract. For large square matrices A and functions f, the numerical approximation of the action of ...
MATLAB data sets used for numerical tests in A. Frommer, K. Lund, and D. B. Szyld. Block Krylov sub...
AbstractThe aim of the paper is to compile and compare basic theoretical facts on Krylov subspaces a...
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...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
In this paper we analyze the convergence of some commonly used Krylov subspace methods for computing...
A variety of block Krylov subspace methods have been successfully developed for linear systems and m...
We analyze an expansion of the generalized block Krylov subspace framework of [Electron.\ Trans.\ Nu...
We show how the Arnoldi algorithm for approximating a function of a matrix times a vector can be res...
AbstractA new implementation of restarted Krylov subspace methods for evaluating f(A)b for a functio...
AbstractA new implementation of restarted Krylov subspace methods for evaluating f(A)b for a functio...
MATLAB data sets used for numerical tests in A. Frommer, K. Lund, and D. B. Szyld. Block Krylov sub...
Abstract. For large square matrices A and functions f, the numerical approximation of the action of ...
Abstract. For large square matrices A and functions f, the numerical approximation of the action of ...
MATLAB data sets used for numerical tests in A. Frommer, K. Lund, and D. B. Szyld. Block Krylov sub...
AbstractThe aim of the paper is to compile and compare basic theoretical facts on Krylov subspaces a...
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...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
There is a class of linear problems for which the computation of the matrix-vector product is very ...
In this paper we analyze the convergence of some commonly used Krylov subspace methods for computing...