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A Generalized Randomized Rank-Revealing Factorization

Authors :
Ballard, Grey
Demmel, James
Dumitriu, Ioana
Rusciano, Alexander
Publication Year :
2019

Abstract

We introduce a Generalized Randomized QR-decomposition that may be applied to arbitrary products of matrices and their inverses, without needing to explicitly compute the products or inverses. This factorization is a critical part of a communication-optimal spectral divide-and-conquer algorithm for the nonsymmetric eigenvalue problem. In this paper, we establish that this randomized QR-factorization satisfies the strong rank-revealing properties. We also formally prove its stability, making it suitable in applications. Finally, we present numerical experiments which demonstrate that our theoretical bounds capture the empirical behavior of the factorization.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1909.06524
Document Type :
Working Paper