Statistical Estimation and Optimal Recovery

  • Donoho D
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Abstract

New formulas are given for the minimax linear risk in estimating a linear functional of an unknown object from indirect data contaminated with random Gaussian noise. The formulas cover a variety of loss functions and do not require the symmetry of the convex a priori class. It is shown that affine minimax rules are within a few percent of minimax even among nonlinear rules, for a variety of loss functions. It is also shown that difficulty of estimation is measured by the modulus of continuity of the functional to be estimated. The method of proof exposes a correspondence between minimax affine estimates in the statistical estimation problem and optimal algorithms in the theory of optimal recovery.

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APA

Donoho, D. L. (2007). Statistical Estimation and Optimal Recovery. The Annals of Statistics, 22(1). https://doi.org/10.1214/aos/1176325367

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