AbstractWe discuss a class of deflated block Krylov subspace methods for solving large scale matrix eigenvalue problems. The efficiency of an Arnoldi-type method is examined in computing partial or closely clustered eigenvalues of large matrices. As an improvement, we also propose a refined variant of the Arnoldi-type method. Comparisons show that the refined variant can further improve the Arnoldi-type method and both methods exhibit very regular convergence behavior
this paper we will explore several preconditioned eigenvalue solvers and identify the ones suited fo...
Several methods are discribed for combinations of Krylov subspace techniques, deflation procedures a...
Computing the eigenvalues and eigenvectors of a large sparse nonsymmetric matrix arises in many appl...
AbstractWe discuss a class of deflated block Krylov subspace methods for solving large scale matrix ...
AbstractIn this paper we show how to improve the approximate solution of the large Sylvester equatio...
ods for solving large linear systems of equations. Those problems are involved in many applications ...
Large-scale eigenvalue problems arise in a number of DOE applications. This paper provides an overv...
Abstract. This paper presents three methods for the large scale generalized eigenvalue problem Ax = ...
Consider solving a sequence of linear systems A_{(i)}x^{(i)}=b^{(i)}, i=1, 2, ... where A₍ᵢ₎ ϵℂⁿᵡⁿ ...
AbstractWe consider solving eigenvalue problems or model reduction problems for a quadratic matrix p...
We consider solving eigenvalue problems or model reduction problems for a quadratic matrix polynomia...
AbstractThe block Arnoldi method is one of the most commonly used techniques for large eigenproblems...
AbstractComputing the eigenvalues and eigenvectors of a large sparse nonsymmetric matrix arises in m...
We consider solving eigenvalue problems or model reduction problems for a quadratic matrix polynomia...
We are interested in computing eigenvalues and eigenvectors of matrices derived from differential eq...
this paper we will explore several preconditioned eigenvalue solvers and identify the ones suited fo...
Several methods are discribed for combinations of Krylov subspace techniques, deflation procedures a...
Computing the eigenvalues and eigenvectors of a large sparse nonsymmetric matrix arises in many appl...
AbstractWe discuss a class of deflated block Krylov subspace methods for solving large scale matrix ...
AbstractIn this paper we show how to improve the approximate solution of the large Sylvester equatio...
ods for solving large linear systems of equations. Those problems are involved in many applications ...
Large-scale eigenvalue problems arise in a number of DOE applications. This paper provides an overv...
Abstract. This paper presents three methods for the large scale generalized eigenvalue problem Ax = ...
Consider solving a sequence of linear systems A_{(i)}x^{(i)}=b^{(i)}, i=1, 2, ... where A₍ᵢ₎ ϵℂⁿᵡⁿ ...
AbstractWe consider solving eigenvalue problems or model reduction problems for a quadratic matrix p...
We consider solving eigenvalue problems or model reduction problems for a quadratic matrix polynomia...
AbstractThe block Arnoldi method is one of the most commonly used techniques for large eigenproblems...
AbstractComputing the eigenvalues and eigenvectors of a large sparse nonsymmetric matrix arises in m...
We consider solving eigenvalue problems or model reduction problems for a quadratic matrix polynomia...
We are interested in computing eigenvalues and eigenvectors of matrices derived from differential eq...
this paper we will explore several preconditioned eigenvalue solvers and identify the ones suited fo...
Several methods are discribed for combinations of Krylov subspace techniques, deflation procedures a...
Computing the eigenvalues and eigenvectors of a large sparse nonsymmetric matrix arises in many appl...