Often the easiest way to discretize an ordinary or partial differential equation is by a rectangular numerical method, in which n basis functions are sampled at m ≫ n collocation points. We show how eigenvalue problems can be solved in this setting by QR reduction to square matrix generalized eigenvalue problems. The method applies equally in the limit “m= ∞” of eigenvalue problems for quasimatrices. Numerical examples are presented as well as pointers to related literature
We describe a fast and numerically robust approach based on the structured QR eigenvalue algorithm f...
We describe a fast and numerically robust approach based on the structured QR eigenvalue algorithm f...
We describe a fast and numerically robust approach based on the structured QR eigenvalue algorithm f...
Often the easiest way to discretize an ordinary or partial differential equation is by a rectangular...
We develop spectral methods for ODEs and operator eigenvalue problems that are based on a least-squa...
We develop spectral methods for ODEs and operator eigenvalue problems that are based on a least-squa...
Abstract. We demonstrate that eigenvalue problems for ordinary differential equations can be recast ...
Abstract—In this paper, we develop quartic spline collocation methods and treat a number of eigenval...
In this section, we will consider two methods for computing an eigenvector and in addition the assoc...
In this section, we will consider two methods for computing an eigenvector and in addition the assoc...
Discretisations of differential eigenvalue problems have a sensitivity to perturbations which is asy...
Discretisations of differential eigenvalue problems have a sensitivity to perturbations which is asy...
Discretisations of differential eigenvalue problems have a sensitivity to perturbations which is asy...
Discretisations of differential eigenvalue problems have a sensitivity to perturbations which is asy...
We demonstrate that eigenvalue problems for ordinary differential equations can be recast in a formu...
We describe a fast and numerically robust approach based on the structured QR eigenvalue algorithm f...
We describe a fast and numerically robust approach based on the structured QR eigenvalue algorithm f...
We describe a fast and numerically robust approach based on the structured QR eigenvalue algorithm f...
Often the easiest way to discretize an ordinary or partial differential equation is by a rectangular...
We develop spectral methods for ODEs and operator eigenvalue problems that are based on a least-squa...
We develop spectral methods for ODEs and operator eigenvalue problems that are based on a least-squa...
Abstract. We demonstrate that eigenvalue problems for ordinary differential equations can be recast ...
Abstract—In this paper, we develop quartic spline collocation methods and treat a number of eigenval...
In this section, we will consider two methods for computing an eigenvector and in addition the assoc...
In this section, we will consider two methods for computing an eigenvector and in addition the assoc...
Discretisations of differential eigenvalue problems have a sensitivity to perturbations which is asy...
Discretisations of differential eigenvalue problems have a sensitivity to perturbations which is asy...
Discretisations of differential eigenvalue problems have a sensitivity to perturbations which is asy...
Discretisations of differential eigenvalue problems have a sensitivity to perturbations which is asy...
We demonstrate that eigenvalue problems for ordinary differential equations can be recast in a formu...
We describe a fast and numerically robust approach based on the structured QR eigenvalue algorithm f...
We describe a fast and numerically robust approach based on the structured QR eigenvalue algorithm f...
We describe a fast and numerically robust approach based on the structured QR eigenvalue algorithm f...