Deviation Maximization for Rank-Revealing QR Factorizations

06/06/2021
by   Monica Dessole, et al.
0

In this paper we introduce a new column selection strategy, named here “Deviation Maximization", and apply it to compute rank-revealing QR factorizations as an alternative to the well known block version of the QR factorization with the column pivoting method, called QP3 and currently implemented in LAPACK's xgeqp3 routine. We show that the resulting algorithm, named QRDM, has similar rank-revealing properties of QP3 and better execution times. We present numerical test results on a wide data set of numerically singular matrices, which has become a reference in the recent literature.

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