Suppose that a sequence of unknown parameters is observed sub ject to independent Gaussian noise. The EbayesThresh package in the S language implements a class of Empirical Bayes thresholding methods that can take advantage of possible sparsity in the sequence, to improve the quality of estimation. The prior for each parameter in the sequence is a mixture of an atom of probability at zero and a heavy-tailed density. Within the package, this can be either a Laplace (double exponential) density or else a mixture of normal distributions with tail behavior similar to the Cauchy distribution. The mixing weight, or sparsity parameter, is chosen automatically by marginal maximum likelihood. If estimation is carried out using the posterior median...
Wavelet methods have demonstrated considerable success in function estimation through term-by-term t...
International audienceWe propose a parametric wavelet thresholding procedure for estimation in the '...
Many wavelet-based algorithms have been proposed in recent years to solve the problem of function es...
Suppose that a sequence of unknown parameters is observed sub ject to independent Gaussian noise. Th...
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in wa...
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in w...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
In the signal+noise model, we assume that the signal has a more general sparsity structure in the se...
Wavelet threshold algorithms replace small magnitude wavelet coefficients with zero and keep or shri...
The problem of estimating a high-dimensional sparse vector θ ∈ ℝ n from an observation in i.i.d. Gau...
This paper presents and discusses an alternative notion of sparsity. This notion derives from a theo...
We discuss a Bayesian formalism which gives rise to a type of wavelet threshold estimation in nonpar...
The problem of estimating a high-dimensional sparse vector $\boldsymbol{\theta} \in \mathbb{R}^n$ fr...
Wavelet shrinkage estimation is an increasingly popular method for signal denoising and compression....
We consider model selection in a hierarchical Bayes formulation of the sparse normal linear model in...
Wavelet methods have demonstrated considerable success in function estimation through term-by-term t...
International audienceWe propose a parametric wavelet thresholding procedure for estimation in the '...
Many wavelet-based algorithms have been proposed in recent years to solve the problem of function es...
Suppose that a sequence of unknown parameters is observed sub ject to independent Gaussian noise. Th...
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in wa...
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in w...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
In the signal+noise model, we assume that the signal has a more general sparsity structure in the se...
Wavelet threshold algorithms replace small magnitude wavelet coefficients with zero and keep or shri...
The problem of estimating a high-dimensional sparse vector θ ∈ ℝ n from an observation in i.i.d. Gau...
This paper presents and discusses an alternative notion of sparsity. This notion derives from a theo...
We discuss a Bayesian formalism which gives rise to a type of wavelet threshold estimation in nonpar...
The problem of estimating a high-dimensional sparse vector $\boldsymbol{\theta} \in \mathbb{R}^n$ fr...
Wavelet shrinkage estimation is an increasingly popular method for signal denoising and compression....
We consider model selection in a hierarchical Bayes formulation of the sparse normal linear model in...
Wavelet methods have demonstrated considerable success in function estimation through term-by-term t...
International audienceWe propose a parametric wavelet thresholding procedure for estimation in the '...
Many wavelet-based algorithms have been proposed in recent years to solve the problem of function es...