具有可分离协方差结构的高维噪声下奇异值的数据驱动优化收缩及其应用

IF 2.6 2区 数学 Q1 MATHEMATICS, APPLIED Applied and Computational Harmonic Analysis Pub Date : 2024-09-12 DOI:10.1016/j.acha.2024.101698
Pei-Chun Su , Hau-Tieng Wu
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引用次数: 0

摘要

我们针对具有高维噪声和可分离协方差结构的矩阵去噪,开发了一种数据驱动的最优收缩算法,并将其命名为扩展 OptShrink(eOptShrink)。这种噪声是有颜色的,并依赖于不同的样本。该算法利用了噪声数据随机矩阵奇异值和向量的渐近行为。我们的理论包括非离群奇异值的粘性特性、弱信号奇异向量的脱域以及离群奇异值和向量的频谱行为。我们引入了三种估计器:新颖的秩估计器、纯噪声矩阵频谱分布估计器和最优收缩器 eOptShrink。值得注意的是,eOptShrink 无需估计噪声的可分离协方差结构。我们从理论上保证了这些估计器的收敛速度。通过数值模拟以及与最先进的最优收缩算法的比较,我们展示了 eOptShrink 在从单通道经腹母体心电图中提取母体和胎儿心电图中的应用。
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Data-driven optimal shrinkage of singular values under high-dimensional noise with separable covariance structure with application

We develop a data-driven optimal shrinkage algorithm, named extended OptShrink (eOptShrink), for matrix denoising with high-dimensional noise and a separable covariance structure. This noise is colored and dependent across samples. The algorithm leverages the asymptotic behavior of singular values and vectors of the noisy data's random matrix. Our theory includes the sticking property of non-outlier singular values, delocalization of weak signal singular vectors, and the spectral behavior of outlier singular values and vectors. We introduce three estimators: a novel rank estimator, an estimator for the spectral distribution of the pure noise matrix, and the optimal shrinker eOptShrink. Notably, eOptShrink does not require estimating the noise's separable covariance structure. We provide a theoretical guarantee for these estimators with a convergence rate. Through numerical simulations and comparisons with state-of-the-art optimal shrinkage algorithms, we demonstrate eOptShrink's application in extracting maternal and fetal electrocardiograms from single-channel trans-abdominal maternal electrocardiograms.

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来源期刊
Applied and Computational Harmonic Analysis
Applied and Computational Harmonic Analysis 物理-物理:数学物理
CiteScore
5.40
自引率
4.00%
发文量
67
审稿时长
22.9 weeks
期刊介绍: Applied and Computational Harmonic Analysis (ACHA) is an interdisciplinary journal that publishes high-quality papers in all areas of mathematical sciences related to the applied and computational aspects of harmonic analysis, with special emphasis on innovative theoretical development, methods, and algorithms, for information processing, manipulation, understanding, and so forth. The objectives of the journal are to chronicle the important publications in the rapidly growing field of data representation and analysis, to stimulate research in relevant interdisciplinary areas, and to provide a common link among mathematical, physical, and life scientists, as well as engineers.
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