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首页> 外文期刊>SIAM Journal on Matrix Analysis and Applications >THE EFFECT OF COHERENCE ON SAMPLING FROM MATRICES WITH ORTHONORMAL COLUMNS, AND PRECONDITIONED LEAST SQUARES PROBLEMS
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THE EFFECT OF COHERENCE ON SAMPLING FROM MATRICES WITH ORTHONORMAL COLUMNS, AND PRECONDITIONED LEAST SQUARES PROBLEMS

机译:相干性对正交列矩阵中采样的影响以及预设的最小二乘问题

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Motivated by the least squares solver Blendenpik, we investigate three strategies for uniform sampling of rows from m x n matrices Q with orthonormal columns. The goal is to determine, with high probability, how many rows are required so that the sampled matrices have full rank and are well-conditioned with respect to inversion. Extensive numerical experiments illustrate that the three sampling strategies (without replacement, with replacement, and Bernoulli sampling) behave almost identically, for small to moderate amounts of sampling. In particular, sampled matrices of full rank tend to have two-norm condition numbers of at most 10. We derive a bound on the condition number of the sampled matrices in terms of the coherence mu of Q. This bound applies to all three different sampling strategies; it implies a, not necessarily tight, lower bound of O(m mu ln n) for the number of sampled rows; and it is realistic and informative even for matrices of small dimension and the stringent requirement of a 99 percent success probability. For uniform sampling with replacement we derive a potentially tighter condition number bound in terms of the leverage scores of Q. To obtain a more easily computable version of this bound, in terms of just the largest leverage scores, we first derive a general bound on the two-norm of diagonally scaled matrices. To facilitate the numerical experiments and test the tightness of the bounds, we present algorithms to generate matrices with user-specified coherence and leverage scores. These algorithms, the three sampling strategies, and a large variety of condition number bounds are implemented in the MATLAB toolbox kappa_SQ.
机译:在最小二乘求解器Blendenpik的激励下,我们研究了从正交矩阵的m x n个矩阵Q均匀采样行的三种策略。目标是以高概率确定需要多少行,以使采样矩阵具有完整的秩,并且相对于反演而言条件良好。大量的数值实验表明,对于少量到中度的采样,这三种采样策略(无替换,有替换和伯努利采样)的行为几乎相同。特别是,满秩的采样矩阵往往具有最多为10的两个范数条件数。我们根据Q的相干性mu得出采样矩阵的条件数的界线。该界线适用于所有三个不同的采样策略;它暗示了采样行数的O(m mu ln n)的下界,但不一定紧密;即使对于小尺寸的矩阵以及对成功率必须达到99%的严格要求,它也是现实且有用的。对于有替换的统一抽样,我们根据Q的杠杆得分得出一个可能更严格的条件数边界。要获得更容易计算的此边界版本,就最大的杠杆得分而言,我们首先得出对对角缩放矩阵的两个范数。为了促进数值实验和测试边界的紧密度,我们提出了算法,以生成具有用户指定的连贯性和杠杆得分的矩阵。在MATLAB工具箱kappa_SQ中实现了这些算法,三种采样策略以及多种条件编号范围。

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