AbstractArnoldi's method has been popular for computing the small number of selected eigenvalues and the associated eigenvectors of large unsymmetric matrices. However, the approximate eigenvectors or Ritz vectors obtained by Arnoldi's method cannot be guaranteed to converge in theory even if the approximate eigenvalues or Ritz values do. In order to circumvent this potential danger, a new strategy is proposed that computes refined approximate eigenvectors by small sized singular value decompositions. It is shown that refined approximate eigenvectors converge to eigenvectors if Ritz values do. Moreover, the resulting refined algorithms converge more rapidly. We report some numerical experiments and compare the refined algorithms with their ...
Arnoldi method approximates exterior eigenvalues of a large sparse matrix, but may fail to approxima...
Arnoldi's method is often used to compute a few eigenvalues and eigenvectors of large, sparse matric...
Arnoldi methods can be more effective than subspace iteration methods for computing the dominant elg...
AbstractWhen the matrix in question is unsymmetric, the approximate eigenvectors or Ritz vectors obt...
AbstractArnoldi's method has been popular for computing the small number of selected eigenvalues and...
AbstractThe shift-and-invert Arnoldi method has been popularly used for computing a number of eigenv...
AbstractThe shift-and-invert Arnoldi method has been popularly used for computing a number of eigenv...
Jia ZX, Elsner L. Improving eigenvectors in Arnoldi's method. JOURNAL OF COMPUTATIONAL MATHEMATICS. ...
AbstractIt is shown that the method of Arnoldi can be successfully used for solvinglarge unsymmetric...
We present two methods for computing the leading eigenpairs of large sparse unsymmetric matrices. Na...
We present two methods for computing the leading eigenpairs of large sparse unsymmetric matrices. Na...
We present two methods for computing the leading eigenpairs of large sparse unsymmetric matrices. Na...
AbstractThe block Arnoldi method is one of the most commonly used techniques for large eigenproblems...
We present two methods for computing the leading eigenpairs of large sparse unsymmetric matrices. Na...
Arnoldi method approximates exterior eigenvalues of a large sparse matrix, but may fail to approxima...
Arnoldi method approximates exterior eigenvalues of a large sparse matrix, but may fail to approxima...
Arnoldi's method is often used to compute a few eigenvalues and eigenvectors of large, sparse matric...
Arnoldi methods can be more effective than subspace iteration methods for computing the dominant elg...
AbstractWhen the matrix in question is unsymmetric, the approximate eigenvectors or Ritz vectors obt...
AbstractArnoldi's method has been popular for computing the small number of selected eigenvalues and...
AbstractThe shift-and-invert Arnoldi method has been popularly used for computing a number of eigenv...
AbstractThe shift-and-invert Arnoldi method has been popularly used for computing a number of eigenv...
Jia ZX, Elsner L. Improving eigenvectors in Arnoldi's method. JOURNAL OF COMPUTATIONAL MATHEMATICS. ...
AbstractIt is shown that the method of Arnoldi can be successfully used for solvinglarge unsymmetric...
We present two methods for computing the leading eigenpairs of large sparse unsymmetric matrices. Na...
We present two methods for computing the leading eigenpairs of large sparse unsymmetric matrices. Na...
We present two methods for computing the leading eigenpairs of large sparse unsymmetric matrices. Na...
AbstractThe block Arnoldi method is one of the most commonly used techniques for large eigenproblems...
We present two methods for computing the leading eigenpairs of large sparse unsymmetric matrices. Na...
Arnoldi method approximates exterior eigenvalues of a large sparse matrix, but may fail to approxima...
Arnoldi method approximates exterior eigenvalues of a large sparse matrix, but may fail to approxima...
Arnoldi's method is often used to compute a few eigenvalues and eigenvectors of large, sparse matric...
Arnoldi methods can be more effective than subspace iteration methods for computing the dominant elg...