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Unbiased Risk Estimates for Singular Value Thresholding and Spectral Estimators

机译:奇异值阈值和谱估计的无偏风险估计

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摘要

In an increasing number of applications, it is of interest to recover an approximately low-rank data matrix from noisy observations. This paper develops an unbiased risk estimate—holding in a Gaussian model—for any spectral estimator obeying some mild regularity assumptions. In particular, we give an unbiased risk estimate formula for singular value thresholding (SVT), a popular estimation strategy that applies a soft-thresholding rule to the singular values of the noisy observations. Among other things, our formulas offer a principled and automated way of selecting regularization parameters in a variety of problems. In particular, we demonstrate the utility of the unbiased risk estimation for SVT-based denoising of real clinical cardiac MRI series data. We also give new results concerning the differentiability of certain matrix-valued functions.
机译:在越来越多的应用中,从嘈杂的观察中恢复近似低秩的数据矩阵是令人关注的。本文针对服从某些轻度规律性假设的任何频谱估计量,开发了一个无偏风险估计(保持在高斯模型中)。尤其是,我们给出了奇异值阈值化(SVT)的无偏风险估计公式,这是一种流行的估计策略,该方法将软阈值规则应用于嘈杂观测值的奇异值。除其他外,我们的公式提供了一种在各种问题中选择正则化参数的有原则的自动方法。特别是,我们证明了基于真实临床心脏MRI系列数据的基于SVT的降噪的无偏风险评估的实用性。我们还给出了有关某些矩阵值函数的可微性的新结果。

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