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Accurate low-rank matrix recovery from a small number of linear measurements

机译:通过少量的线性测量即可准确地恢复低秩矩阵

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We consider the problem of recovering a low-rank matrix M from a small number of random linear measurements. A popular and useful example of this problem is matrix completion, in which the measurements reveal the values of a subset of the entries, and we wish to fill in the missing entries (this is the famous Netflix problem). When M is believed to have low rank, one would ideally try to recover M by finding the minimum-rank matrix that is consistent with the data; this is, however, problematic since this is a nonconvex problem that is, generally, intractable.Nuclear-norm minimization has been proposed as a tractable approach, and past papers have delved into the theoretical properties of nuclear-norm minimization algorithms, establishing conditions under which minimizing the nuclear norm yields the minimum rank solution. We review this spring of emerging literature and extend and refine previous theoretical results. Our focus is on providing error bounds when M is well approximated by a low-rank matrix, and when the measurements are corrupted with noise. We show that for a certain class of random linear measurements, nuclear-norm minimization provides stable recovery from a number of samples nearly at the theoretical lower limit, and enjoys order-optimal error bounds (with high probability).
机译:我们考虑从少量随机线性测量中恢复低秩矩阵M的问题。这个问题的一个流行且有用的例子是矩阵完成,其中的度量揭示了条目子集的值,我们希望填写缺失的条目(这是著名的Netflix问题)。当认为M的秩较低时,理想情况下,将尝试通过找到与数据一致的最小秩矩阵来恢复M。然而,这是有问题的,因为这是通常难以解决的非凸问题。 已经提出了将核规范最小化作为一种​​易于处理的方法,并且过去的论文已深入研究了核规范最小化算法的理论特性,从而建立了使核规范最小化产生最小秩解的条件。我们回顾了新兴文学的这一春季,并扩展和完善了先前的理论结果。我们的重点是当由低秩矩阵很好地近似M且测量结果被噪声破坏时,提供误差范围。我们表明,对于一类随机线性测量,核范数最小化可从多个样本中以接近理论下限的水平稳定地恢复数据,并享有阶次最优误差范围(概率很高)。

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