Bayesian wavelet de-noising with the caravan prior

Journal Article (2020)
Authors

S Gugushvili (Wageningen University & Research)

Frank van Meulen (TU Delft - Statistics)

MR Schauer (University of Gothenburg, Chalmers University of Technology)

Peter Spreij (Universiteit van Amsterdam, Radboud Universiteit Nijmegen)

Research Group
Statistics
To reference this document use:
https://doi.org/10.1051/ps/2019019
More Info
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Publication Year
2020
Language
English
Research Group
Statistics
Volume number
23 (2019)
Pages (from-to)
947-978
DOI:
https://doi.org/10.1051/ps/2019019

Abstract

According to both domain expert knowledge and empirical evidence, wavelet coefficients of real signals tend to exhibit clustering patterns, in that they contain connected regions of coefficients of similar magnitude (large or small). A wavelet de-noising approach that takes into account such a feature of the signal may in practice outperform other, more vanilla methods, both in terms of the estimation error and visual appearance of the estimates. Motivated by this observation, we present a Bayesian approach to wavelet de-noising, where dependencies between neighbouring wavelet coefficients are a priori modelled via a Markov chain-based prior, that we term the caravan prior. Posterior computations in our method are performed via the Gibbs sampler. Using representative synthetic and real data examples, we conduct a detailed comparison of our approach with a benchmark empirical Bayes de-noising method (due to Johnstone and Silverman). We show that the caravan prior fares well and is therefore a useful addition to the wavelet de-noising toolbox.

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