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Numerical linear algebra / Matrix theory / Mathematical physics / Singular value decomposition / Eigenvalues and eigenvectors / Eigenvalue algorithm / Lanczos algorithm / Perturbation theory / QR algorithm / Algebra / Mathematics / Linear algebra
Date: 2011-05-11 08:16:59
Numerical linear algebra
Matrix theory
Mathematical physics
Singular value decomposition
Eigenvalues and eigenvectors
Eigenvalue algorithm
Lanczos algorithm
Perturbation theory
QR algorithm
Algebra
Mathematics
Linear algebra

DELFT UNIVERSITY OF TECHNOLOGY REPORTLarge-Scale Eigenvalue Problems in Trust-Region Calculations Marielba Rojas, Bjørn H. Fotland, and Trond Steihaug

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