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Preconditioned Locally Harmonic Residual Method for Computing Interior Eigenpairs of Certain Classes of Hermitian Matrices
by
Vecharynski, Eugene
, Knyazev, Andrew
in
Computation
/ Eigenvalues
/ Inversions
/ Operators (mathematics)
/ Preconditioning
/ Robustness (mathematics)
2014
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Do you wish to request the book?
Preconditioned Locally Harmonic Residual Method for Computing Interior Eigenpairs of Certain Classes of Hermitian Matrices
by
Vecharynski, Eugene
, Knyazev, Andrew
in
Computation
/ Eigenvalues
/ Inversions
/ Operators (mathematics)
/ Preconditioning
/ Robustness (mathematics)
2014
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Preconditioned Locally Harmonic Residual Method for Computing Interior Eigenpairs of Certain Classes of Hermitian Matrices
Paper
Preconditioned Locally Harmonic Residual Method for Computing Interior Eigenpairs of Certain Classes of Hermitian Matrices
2014
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Overview
We propose a Preconditioned Locally Harmonic Residual (PLHR) method for computing several interior eigenpairs of a generalized Hermitian eigenvalue problem, without traditional spectral transformations, matrix factorizations, or inversions. PLHR is based on a short-term recurrence, easily extended to a block form, computing eigenpairs simultaneously. PLHR can take advantage of Hermitian positive definite preconditioning, e.g., based on an approximate inverse of an absolute value of a shifted matrix, introduced in [SISC, 35 (2013), pp. A696-A718]. Our numerical experiments demonstrate that PLHR is efficient and robust for certain classes of large-scale interior eigenvalue problems, involving Laplacian and Hamiltonian operators, especially if memory requirements are tight.
Publisher
Cornell University Library, arXiv.org
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