John A. Hoffnagle, William D. Hinsberg, et al.
Microlithography 2003
A heuristic argument and supporting numerical results are given to demonstrate that a block Lanczos procedure can be used to compute simultaneously a few of the algebraically largest and smallest eigenvalues and a corresponding eigenspace of a large, sparse, symmetric matrix A. This block procedure can be used, for example, to compute appropriate parameters for iterative schemes used in solving the equation Ax=b. Moreover, if there exists an efficient method for repeatedly solving the equation (A-σI)X=B, this procedure can be used to determine the interior eigenvalues (and corresponding eigenvectors) of A closest to σ. © 1978 BIT Foundations.
John A. Hoffnagle, William D. Hinsberg, et al.
Microlithography 2003
R.B. Morris, Y. Tsuji, et al.
International Journal for Numerical Methods in Engineering
Matthew A Grayson
Journal of Complexity
A.R. Gourlay, G. Kaye, et al.
Proceedings of SPIE 1989