Feng et al., 2019 - Google Patents
Flip-flop spectrum-revealing QR factorization and its applications to singular value decompositionFeng et al., 2019
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- 6684967583816723965
- Author
- Feng Y
- Xiao J
- Gu M
- Publication year
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We present the Flip-Flop Spectrum-Revealing QR (Flip-Flop SRQR) factorization, a significantly faster and more reliable variant of the QLP factorization of Stewart for low-rank matrix approximations. Flip-Flop SRQR uses SRQR factorization to initialize a partial column …
- 238000000354 decomposition reaction 0 title description 30
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