Flip-flop spectrum-revealing QR factorization and its applications to singular value decomposition

Yuehua Feng, Jianwei Xiao, M. Gu
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引用次数: 5

Abstract

We present 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 pivoted QR factorization and then compute a partial LQ factorization. As observed by Stewart in his original QLP work, Flip-Flop SRQR tracks the exact singular values with "considerable fidelity". We develop singular value lower bounds and residual error upper bounds for Flip-Flop SRQR factorization. In situations where singular values of the input matrix decay relatively quickly, the low-rank approximation computed by SRQR is guaranteed to be as accurate as truncated SVD. We also perform a complexity analysis to show that for the same accuracy, Flip-Flop SRQR is faster than randomized subspace iteration for approximating the SVD, the standard method used in Matlab tensor toolbox. We also compare Flip-Flop SRQR with alternatives on two applications, tensor approximation and nuclear norm minimization, to demonstrate its efficiency and effectiveness.
触发器揭示谱的QR分解及其在奇异值分解中的应用
我们提出了Flip-Flop频谱揭示QR (Flip-Flop SRQR)分解,这是Stewart的QLP分解的一个显著更快和更可靠的变体,用于低秩矩阵近似。触发器SRQR使用SRQR分解初始化部分列枢轴QR分解,然后计算部分LQ分解。正如Stewart在他最初的QLP工作中所观察到的,Flip-Flop SRQR以“相当的保真度”跟踪精确的奇异值。提出了一种基于触发器SRQR分解的奇异值下界和残差上界。在输入矩阵奇异值衰减较快的情况下,保证SRQR计算的低秩近似与截断的SVD一样准确。我们还进行了复杂性分析,以表明在相同的精度下,Flip-Flop SRQR比随机子空间迭代更快地逼近SVD,这是Matlab张量工具箱中使用的标准方法。我们还比较了Flip-Flop SRQR与备选方案在张量逼近和核范数最小化两种应用上的效率和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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