Computing probabilistic bounds for extreme eigenvalues of symmetric matrices with the Lanczos method
Files
Publication date
1999-01-01
Authors
Dorsselaer, J.L.M. van
Hochstenbach, Michiel Erik
Vorst, H.A. van der
Editors
Advisors
Supervisors
DOI
Document Type
Article
Metadata
Show full item recordCollections
License
Abstract
We study the Lanczos method for computing extreme eigenvalues of a symmetric or Hermitian matrix. It is not guaranteed that the extreme Ritz values are close to the extreme eigenvalues|even when the norms of the corresponding residual vectors are small. Assuming that the starting vector has been chosen randomly, we compute probabilistic bounds for the extreme eigenvalues from data available during the execution of the Lanczos process. Four dierent types of bounds are obtained using Lanczos, Ritz, and Chebyshev polynomials. These bounds are compared theoretically and numerically. Furthermore we show how one can determine, after each Lanczos step, a probabilistic upper bound for the number of steps still needed (without performing these steps) to obtain an approximation to the largest or smallest eigenvalue within a prescribed tolerance.
Keywords
symmetric and Hermitian matrices, eigenvalues, Lanczos method, Ritz values, computation of probabilistic eigenvalue bounds, misconvergence, Lanczos polynomials, Ritz polynomials