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Fast Parallel Randomized QR with Column Pivoting Algorithms for Reliable Low-Rank Matrix Approximations

机译:具有柱枢转算法的快速并行随机QR,用于可靠的低级矩阵近似

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Factorizing large matrices by QR with column pivoting (QRCP) is substantially more expensive than QR without pivoting, owing to communication costs required for pivoting decisions. In contrast, randomized QRCP (RQRCP) algorithms have proven themselves empirically to be highly competitive with high-performance implementations of QR in processing time, on uniprocessor and shared memory machines, and as reliable as QRCP in pivot quality. We show that RQRCP algorithms can be as reliable as QRCP with failure probabilities exponentially decaying in oversampling size. We also analyze efficiency differences among different RQRCP algorithms. More importantly, we develop distributed memory implementations of RQRCP that are significantly better than QRCP implementations in ScaLAPACK. As a further development, we introduce the concept of and develop algorithms for computing spectrum-revealing QR factorizations for low-rank matrix approximations, and demonstrate their effectiveness against leading low-rank approximation methods in both theoretical and numerical reliability and efficiency.
机译:由于枢转决定所需的通信成本,通过柱枢转(QRCP)通过QR进行QR的大矩阵基本上比QR级,而不会枢转。相比之下,随机化的QRCP(RQRCP)算法已经证明自己经验上竞争高度竞争,在加工时间上的QR的高性能实现,在单处理器和共享的存储器上,以及QRCP以枢轴质量可靠。我们表明RQRCP算法可以像QRCP一样可靠,具有过采样尺寸的失败概率逐渐衰减。我们还分析了不同RQRCP算法之间的效率差异。更重要的是,我们开发RQRCP的分布式内存实现,这些内存实现明显优于Qrcapack中的QRCP实现。作为进一步的发展,我们介绍了用于计算频谱的概念和开发算法,用于计算低秩矩阵近似的QR型QR因子,并展示其对理论和数值可靠性和效率的领先低秩近似方法的有效性。

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