Probabilistic Rounding Error Analysis of Householder QR Factorization

Abstract

When an m×nm\times n matrix is premultiplied by a product of nn Householder matrices the worst-case normwise rounding error bound is proportional to mnumnu, where uu is the unit roundoff. We prove that this bound can be replaced by one proportional to mnu\sqrt{mn}u that holds with high probability if the rounding errors are mean independent and of mean zero. The proof makes use of a matrix concentration inequality. In particular, this result applies to Householder QR factorization. The same square rooting of the error constant applies to two-sided transformations by Householder matrices and hence to standard QR-type algorithms for computing eigenvalues and singular values. It also applies to Givens QR factorization. These results complement recent probabilistic rounding error analysis results for inner-product based algorithms and show that the square rooting effect is widespread in numerical linear algebra. Our numerical experiments, which make use of a new backward error formula for QR factorization, show that the probabilistic bounds give a much better indicator of the actual backward errors and their rate of growth than the worst-case bounds

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Last time updated on 23/02/2022

This paper was published in MIMS EPrints.

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