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Gamma-Minimax Wavelet Shrinkage with Three-Point Priors

Published 15 Apr 2022 in stat.ME and stat.CO | (2204.07544v1)

Abstract: In this paper we propose a method for wavelet denoising of signals contaminated with Gaussian noise when prior information about the $L2$-energy of the signal is available. Assuming the independence model, according to which the wavelet coefficients are treated individually, we propose a simple, level dependent shrinkage rules that turn out to be $\Gamma$-minimax for a suitable class of priors. The proposed methodology is particularly well suited in denoising tasks when the signal-to-noise ratio is low, which is illustrated by simulations on the battery of standard test functions. Comparison to some standardly used wavelet shrinkage methods is provided.

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