Volume 3, pp. 39-49, 1995.
On graded QR decompositions of products of matrices
G. W. Stewart
Abstract
This paper is concerned with the singular values and vectors of a product $M_{m}=A_{1}A_{2}\cdots A_{m}$ of matrices of order $n$. The chief difficulty with computing them directly from $M_{m}$ is that with increasing $m$ the ratio of the small to the large singular values of $M_{m}$ may fall below the rounding unit, so that the former are computed inaccurately. The solution proposed here is to compute recursively the factorization $M_{m} = QRP^T$, where $Q$ is orthogonal, $R$ is a graded upper triangular, and $P^T$ is a permutation.
Full Text (PDF) [153 KB], BibTeX
Key words
QR~decomposition, singular value decomposition, graded matrix, matrix product.
AMS subject classifications
65F30.
ETNA articles which cite this article
Vol. 5 (1997), pp. 29-47 David E. Stewart: A new algorithm for the SVD of a long product of matrices and the stability of products |
< Back