AbstractWe develop the theory of convergence of a generic GR algorithm for the matrix eigenvalue problem that includes the QR,LR,SR, and other algorithms as special cases. Our formulation allows for shifts of origin and multiple GR steps. The convergence theory is based on the idea that the GR algorithm performs nested subspace iteration with a change of coordinate system at each step. Thus the convergence of the GR algorithm depends on the convergence of certain sequences of subspaces. It also depends on the quality of the coordinate transformation matrices, as measured by their condition numbers. We show that with a certain obvious shifting strategy the GR algorithm typically has a quadratic asymptotic convergence rate. For matrices posse...
We proved convergence for the basic LR algorithm on a real unreduced tridiagonal matrix with a one-p...
AbstractIn this note we consider an iterative algorithm for moving a triangular matrix toward diagon...
Iterative algorithms for large-scale eigenpair computation are mostly based subspace projections con...
AbstractWe develop the theory of convergence of a generic GR algorithm for the matrix eigenvalue pro...
Watkins DS, Elsner L. Chasing Algorithmus for the Eigenvalue Problem. SIAM Journal on matrix analysi...
Watkins DS, Elsner L. Theory of decomposition and bulge-chasing algorithms for the generalized eigen...
在計算矩陣的特徵值(eigenvalues)中,QR演算法是一種常見的技巧. 尤其如果使用適當的移位,將可以較快得到特徵值. 在本文中提出一種新的移位策略, 我們證明這各方法是可行的,而且可適用於任何...
Abstract. The convergence results obtained by J. H. Wilkinson [Linear Algebra Appl. 1 (1968) 409420]...
The convergence of GMRES for solving linear systems can be influenced heavily by the structure of th...
AbstractIn the year 2000 the dominant method for solving matrix eigenvalue problems is still the QR ...
We propose a Newton-like iteration that evolves on the set of fixed dimensional subspaces of R-n and...
Iterative algorithms for large-scale eigenpair computation of symmetric matrices are mostly based on...
AbstractIn 1989, Bai and Demmel proposed the multishift QR algorithm for eigenvalue problems. Althou...
AbstractWe examine global convergence properties of the Francis shifted QR algorithm on real, normal...
AbstractThis paper studies convergence properties of the block gmres algorithm when applied to nonsy...
We proved convergence for the basic LR algorithm on a real unreduced tridiagonal matrix with a one-p...
AbstractIn this note we consider an iterative algorithm for moving a triangular matrix toward diagon...
Iterative algorithms for large-scale eigenpair computation are mostly based subspace projections con...
AbstractWe develop the theory of convergence of a generic GR algorithm for the matrix eigenvalue pro...
Watkins DS, Elsner L. Chasing Algorithmus for the Eigenvalue Problem. SIAM Journal on matrix analysi...
Watkins DS, Elsner L. Theory of decomposition and bulge-chasing algorithms for the generalized eigen...
在計算矩陣的特徵值(eigenvalues)中,QR演算法是一種常見的技巧. 尤其如果使用適當的移位,將可以較快得到特徵值. 在本文中提出一種新的移位策略, 我們證明這各方法是可行的,而且可適用於任何...
Abstract. The convergence results obtained by J. H. Wilkinson [Linear Algebra Appl. 1 (1968) 409420]...
The convergence of GMRES for solving linear systems can be influenced heavily by the structure of th...
AbstractIn the year 2000 the dominant method for solving matrix eigenvalue problems is still the QR ...
We propose a Newton-like iteration that evolves on the set of fixed dimensional subspaces of R-n and...
Iterative algorithms for large-scale eigenpair computation of symmetric matrices are mostly based on...
AbstractIn 1989, Bai and Demmel proposed the multishift QR algorithm for eigenvalue problems. Althou...
AbstractWe examine global convergence properties of the Francis shifted QR algorithm on real, normal...
AbstractThis paper studies convergence properties of the block gmres algorithm when applied to nonsy...
We proved convergence for the basic LR algorithm on a real unreduced tridiagonal matrix with a one-p...
AbstractIn this note we consider an iterative algorithm for moving a triangular matrix toward diagon...
Iterative algorithms for large-scale eigenpair computation are mostly based subspace projections con...