Wavelet shrinkage estimation is an increasingly popular method for signal denoising and compression. Although Bayes estimators can provide excellent mean squared error (MSE) properties, selection of an effective prior is a difficult task. To address this problem, we propose Empirical Bayes (EB) prior selection methods for various error distributions including the normal and the heavier tailed Student t distributions. Under such EB prior distributions, we obtain threshold shrinkage estimators based on model selection, and multiple shrinkage estimators based on model averaging. These EB estimators are seen to be computationally competitive with standard classical thresholding methods, and to be robust to outliers in both the data and wavelet ...
In wavelet shrinkage and thresholding, most of the standard techniques do not consider information t...
Wavelet shrinkage methods are widely recognized as a useful tool for non-parametric regression and s...
Abstract. Statistical inference in the wavelet domain remains vibrant area of contemporary statistic...
Wavelet shrinkage estimation is an increasingly popular method for signal denoising and compression....
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in wa...
ABSTRACT Bayesian methods based on hierarchical mixture models have demonstrated excellent mean squa...
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in w...
This paper discusses Bayesian methods for multiple shrinkage estimation in wavelets. Wavelets are us...
Wavelet methods have demonstrated considerable success in function estimation through term-by-term t...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
We consider an empirical Bayes approach to standard nonparametric regression estimation using a nonl...
We consider model selection in a hierarchical Bayes formulation of the sparse normal linear model in...
There has been great interest in recent years in the development of wavelet methods for estimating a...
In this paper, we discuss the Bayesian inference in wavelet nonparametric problems. In most ...
In this article, a nonparametric regression problem is discussed on wavelet bases via a Bayesian str...
In wavelet shrinkage and thresholding, most of the standard techniques do not consider information t...
Wavelet shrinkage methods are widely recognized as a useful tool for non-parametric regression and s...
Abstract. Statistical inference in the wavelet domain remains vibrant area of contemporary statistic...
Wavelet shrinkage estimation is an increasingly popular method for signal denoising and compression....
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in wa...
ABSTRACT Bayesian methods based on hierarchical mixture models have demonstrated excellent mean squa...
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in w...
This paper discusses Bayesian methods for multiple shrinkage estimation in wavelets. Wavelets are us...
Wavelet methods have demonstrated considerable success in function estimation through term-by-term t...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
We consider an empirical Bayes approach to standard nonparametric regression estimation using a nonl...
We consider model selection in a hierarchical Bayes formulation of the sparse normal linear model in...
There has been great interest in recent years in the development of wavelet methods for estimating a...
In this paper, we discuss the Bayesian inference in wavelet nonparametric problems. In most ...
In this article, a nonparametric regression problem is discussed on wavelet bases via a Bayesian str...
In wavelet shrinkage and thresholding, most of the standard techniques do not consider information t...
Wavelet shrinkage methods are widely recognized as a useful tool for non-parametric regression and s...
Abstract. Statistical inference in the wavelet domain remains vibrant area of contemporary statistic...