应用于数据同化的随机低阶近似的一般误差分析

Alexandre Scotto Di Perrotolo, Youssef Diouane, Selime Gürol, Xavier Vasseur
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引用次数: 0

摘要

事实证明,随机算法在一大类数值线性代数问题上表现出色。它们的理论分析对于提供行为保证至关重要,在这个意义上,随机低秩近似误差的随机分析起着核心作用。事实上,几种用于近似显性特征或星状模的随机方法都可以改写为低秩近似方法。然而,尽管算法种类繁多,现有的理论框架对它们的分析却依赖于协方差矩阵的特定结构,而这种结构并不适合所有算法。我们提出了一个通用框架,用于对中心高斯矩阵和非标准高斯矩阵的 Frobenius 准则低秩近似误差进行随机分析。在对协方差矩阵的最小假设下,我们得出了期望值和概率的精确边界。我们的界值有明确的解释,使我们能够推导出特性,并激励我们对协方差矩阵做出实际选择,从而产生高效的低阶近似计算算法。文献中最常用的边界已被证明是这里提出的边界的一个具体实例,其额外贡献是更加紧密。与数据同化相关的数值实验进一步说明,利用问题结构选择协方差矩阵可以提高我们的约束所建议的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A general error analysis for randomized low-rank approximation with application to data assimilation
Randomized algorithms have proven to perform well on a large class of numerical linear algebra problems. Their theoretical analysis is critical to provide guarantees on their behaviour, and in this sense, the stochastic analysis of the randomized low-rank approximation error plays a central role. Indeed, several randomized methods for the approximation of dominant eigen- or singular modes can be rewritten as low-rank approximation methods. However, despite the large variety of algorithms, the existing theoretical frameworks for their analysis rely on a specific structure for the covariance matrix that is not adapted to all the algorithms. We propose a general framework for the stochastic analysis of the low-rank approximation error in Frobenius norm for centered and non-standard Gaussian matrices. Under minimal assumptions on the covariance matrix, we derive accurate bounds both in expectation and probability. Our bounds have clear interpretations that enable us to derive properties and motivate practical choices for the covariance matrix resulting in efficient low-rank approximation algorithms. The most commonly used bounds in the literature have been demonstrated as a specific instance of the bounds proposed here, with the additional contribution of being tighter. Numerical experiments related to data assimilation further illustrate that exploiting the problem structure to select the covariance matrix improves the performance as suggested by our bounds.
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