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. © 1991-2012 IEEE.
CITATION STYLE
Candes, E. J., Sing-Long, C. A., & Trzasko, J. D. (2013). Unbiased risk estimates for singular value thresholding and spectral estimators. IEEE Transactions on Signal Processing, 61(19), 4643–4657. https://doi.org/10.1109/TSP.2013.2270464
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