AbstractComputing eigenvalues from the interior of the spectrum of a large matrix is a difficult problem. The Rayleigh-Ritz procedure is a standard way of reducing it to a smaller problem, but it is not optimal for interior eigenvalues. Here a method is given that does a better job. In contrast with standard Rayleigh-Ritz, a priori bounds can be given for the accuracy of interior eigenvalue and eigenvector approximations. When applied to the Lanczos algorithm, this method yields better approximations at early stages. Applied to preconditioning methods, the convergence rate is improved
Eigenvalue problems in which just a few eigenvalues and -vectors of a large and sparre matrix have t...
We propose efficient preconditioning algorithms for an eigenvalue problem arising in quantum physics...
Several methods are discribed for combinations of Krylov subspace techniques, deflation procedures a...
AbstractComputing eigenvalues from the interior of the spectrum of a large matrix is a difficult pro...
Computing eigenvalues from the interior of the spectrum of a large matrix is a difficult problem. Th...
Generalized Rayleigh quotients for calculating eigenvalues and eigenvectors of large matrice
This thesis is concerned with inexact eigenvalue algorithms for solving large and sparse algebraic e...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/17...
The problem in this paper is to construct accurate approximations from a subspace to eigenpairs for ...
AbstractIterative methods for solving large, sparse, symmetric eigenvalue problems often encounter c...
Arnoldi's method is often used to compute a few eigenvalues and eigenvectors of large, sparse matric...
AbstractArnoldi's method has been popular for computing the small number of selected eigenvalues and...
Large scale eigenvalue computation is about approximating certain invariant sub-spaces associated wi...
We propose efficient preconditioning algorithms for an eigenvalue problem arising in quantum physics...
When modeling natural phenomena with linear partial differential equations, the discretized system o...
Eigenvalue problems in which just a few eigenvalues and -vectors of a large and sparre matrix have t...
We propose efficient preconditioning algorithms for an eigenvalue problem arising in quantum physics...
Several methods are discribed for combinations of Krylov subspace techniques, deflation procedures a...
AbstractComputing eigenvalues from the interior of the spectrum of a large matrix is a difficult pro...
Computing eigenvalues from the interior of the spectrum of a large matrix is a difficult problem. Th...
Generalized Rayleigh quotients for calculating eigenvalues and eigenvectors of large matrice
This thesis is concerned with inexact eigenvalue algorithms for solving large and sparse algebraic e...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/17...
The problem in this paper is to construct accurate approximations from a subspace to eigenpairs for ...
AbstractIterative methods for solving large, sparse, symmetric eigenvalue problems often encounter c...
Arnoldi's method is often used to compute a few eigenvalues and eigenvectors of large, sparse matric...
AbstractArnoldi's method has been popular for computing the small number of selected eigenvalues and...
Large scale eigenvalue computation is about approximating certain invariant sub-spaces associated wi...
We propose efficient preconditioning algorithms for an eigenvalue problem arising in quantum physics...
When modeling natural phenomena with linear partial differential equations, the discretized system o...
Eigenvalue problems in which just a few eigenvalues and -vectors of a large and sparre matrix have t...
We propose efficient preconditioning algorithms for an eigenvalue problem arising in quantum physics...
Several methods are discribed for combinations of Krylov subspace techniques, deflation procedures a...