Abstract
We consider an empirical Bayes approach to standard nonparametric regression estimation using a nonlinear wavelet methodology. Instead of
specifying a single prior distribution on the parameter space of wavelet coefficients, that is usually the case in the existing literature, we
elicit the $\epsilon$-contamination class of prior distributions that is particularly attractive to work with when one seeks robust priors in
Bayesian analysis. The type II maximum likelihood approach to prior selection is used by maximizing the predictive distribution for the data in
the wavelet domain over a suitable subclass of the $\epsilon$-contamination class of prior distributions. For the prior selected, the posterior
mean yields a thresholding procedure which depends on one free prior parameter and it is level - and amplitude- dependent, allowing thus for
better adaptation in function estimation. We consider an automatic choice of the free prior parameter, guided by considerations on an exact risk
analysis and on the shape of the thresholding rule, enabling the resulting estimator to be fully automated in practice. We also compute
pointwise Bayesian credible intervals for the resulting function estimate using a simulation-based approach. We use several simulated examples
to illustrate the performance of the proposed empirical Bayes term-by-term wavelet scheme, and we make comparisons with other classical and
empirical Bayes term-by-term wavelet schemes. As a practical illustration, we present an application to a real-life data set that was collected
in an atomic force microscopy study.
Anno
2004
Autori IAC
Tipo pubblicazione
Altri Autori
Angelini C., Sapatinas T.
Editore
Gordon and Breach Science Publishers.
Rivista
Journal of statistical computation and simulation (Print)