Blendenpik: Supercharging LAPACK's Least-Squares Solver

SIAM JOURNAL ON SCIENTIFIC COMPUTING(2010)

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摘要
Several innovative random-sampling and random-mixing techniques for solving problems in linear algebra have been proposed in the last decade, but they have not yet made a significant impact on numerical linear algebra. We show that by using a high-quality implementation of one of these techniques, we obtain a solver that performs extremely well in the traditional yardsticks of numerical linear algebra: it is significantly faster than high-performance implementations of existing state-of-the-art algorithms, and it is numerically backward stable. More specifically, we describe a least-squares solver for dense highly overdetermined systems that achieves residuals similar to those of direct QR factorization-based solvers (lapack), outperforms lapack by large factors, and scales significantly better than any QR-based solver.
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direct qr factorization-based solvers,supercharging lapack,qr-based solver,numerical linear algebra,innovative random-sampling,least-squares solver,large factor,linear algebra,high-performance implementation,last decade,high-quality implementation,least square
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