CholeskyQR with Randomization and Pivoting for Tall Matrices (CQRRPT)
Maksim Melnichenko, Oleg Balabanov, Riley Murray, and 3 more authors
SIAM Journal on Matrix Analysis and Applications, 2025
Abstract. This paper develops and analyzes a new algorithm for QR decomposition with column pivoting (QRCP) of rectangular matrices with many more rows than columns. The algorithm carefully combines methods from randomized numerical linear algebra to accelerate pivot decisions for the input matrix and the process of decomposing the pivoted matrix into the QR form. The source of the latter improvement is CholeskyQR with randomized preconditioning. Comprehensive analysis is provided in both exact and finite-precision arithmetic to characterize the algorithm’s rank-revealing properties and its numerical stability granted probabilistic assumptions of the sketching operator. An implementation of the proposed algorithm is described and made available inside the open-source RandLAPACK library, which itself relies on RandBLAS. Experiments with this implementation on an Intel Xeon Gold 6248R CPU demonstrate order-of-magnitude speedups over LAPACK’s standard function for QRCP, and comparable performance to a specialized algorithm for unpivoted QR of tall matrices, which lacks the strong rank-revealing properties of the proposed method.