Kurtosis control in wavelet shrinkage with generalized secant hyperbolic prior

The present paper proposes a bayesian approach for wavelet shrinkage with the use of a shrinkage prior based on the generalized secant hyperbolic distribution symmetric around zero in a nonparemetric regression problem. This shrinkage prior allows the control of the kurtosis of the coefficients, which impacts on the level of shrinkage on its extreme values. Statistical properties such as bias, variance, classical and bayesian risks of the rule are analyzed and performances of the proposed rule are obtained in simulations studies involving the Donoho-Johnstone test functions. Application of the proposed shrinker in denoising Brazilian stock market dataset is also provided.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/09/2020

Asymmetric prior in wavelet shrinkage

In bayesian wavelet shrinkage, the already proposed priors to wavelet co...
research
07/26/2023

A bayesian wavelet shrinkage rule under LINEX loss function

This work proposes a wavelet shrinkage rule under asymmetric LINEX loss ...
research
07/15/2019

Bayesian Wavelet Shrinkage with Beta Priors

We present a Bayesian approach for wavelet shrinkage in the context of n...
research
07/16/2021

Subspace Shrinkage in Conjugate Bayesian Vector Autoregressions

Macroeconomists using large datasets often face the choice of working wi...
research
10/10/2022

Simulation studies to compare bayesian wavelet shrinkage methods in aggregated functional data

The present work describes simulation studies to compare the performance...
research
05/18/2022

Power Transformations of Relative Count Data as a Shrinkage Problem

Here we show an application of our recently proposed information-geometr...
research
10/21/2019

Learning a Generic Adaptive Wavelet Shrinkage Function for Denoising

The rise of machine learning in image processing has created a gap betwe...

Please sign up or login with your details

Forgot password? Click here to reset