Wavelet Shrinkage with Double Weibull Prior |
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Authors: | Norbert Reményi Brani Vidakovic |
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Affiliation: | 1. School of Industrial and Systems Engineering, Georgia Institute of Technology, Atlanta, GA, USA;2. Department of Biomedical Engineering, Georgia Institute of Technology, Atlanta, GA, USA |
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Abstract: | In this article, we propose a denoising methodology in the wavelet domain based on a Bayesian hierarchical model using Double Weibull prior. We propose two estimators, one based on posterior mean (Double Weibull Wavelet Shrinker, DWWS) and the other based on larger posterior mode (DWWS-LPM), and show how to calculate them efficiently. Traditionally, mixture priors have been used for modeling sparse wavelet coefficients. The interesting feature of this article is the use of non-mixture prior. We show that the methodology provides good denoising performance, comparable even to state-of-the-art methods that use mixture priors and empirical Bayes setting of hyperparameters, which is demonstrated by extensive simulations on standardly used test functions. An application to real-word dataset is also considered. |
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Keywords: | Bayes estimation Double Weibull distribution Larger posterior mode Nonparametric regression Wavelet shrinkage |
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