25 pagesInternational audienceIn this paper we compare wavelet Bayesian rules taking into account the sparsity of the signal with priors which are combinations of a Dirac mass with a standard distribution properly normalized. To perform these comparisons, we take the maxiset point of view: i. e. we consider the set of functions which are well estimated (at a prescribed rate) by each procedure. We especially consider the standard cases of Gaussian and heavy-tailed priors. We show that if heavy-tailed priors have extremely good maxiset behavior compared to traditional Gaussian priors, considering large variance Gaussian priors (LVGP) leads to equally successful maxiset behavior. Moreover, these LVGP can be constructed in an adaptive way. We a...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
The availability of complex-structured data has sparked new research directions in statistics and ma...
25 pagesInternational audienceIn this paper we compare wavelet Bayesian rules taking into account th...
In this paper our aim is to provide tools for easily calculating the maxisets of several procedures....
The present paper investigates theoretical performance of various Bayesian wavelet shrinkage rules i...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
We study the Bayesian approach to nonparametric function estimation problems such as nonparametric r...
Bayesian predictive inference provides a coherent description of entire predictive uncertainty throu...
We explore the use of proper priors for variance parameters of certain sparse Bayesian regression mo...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
In all areas of human knowledge, datasets are increasing in both size and complexity, creating the n...
According to both domain expert knowledge and empirical evidence, wavelet coefficients of real signa...
In this paper we propose a block shrinkage method in the wavelet domain for estimating an unknown fu...
Wavelet shrinkage estimation is an increasingly popular method for signal denoising and compression....
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
The availability of complex-structured data has sparked new research directions in statistics and ma...
25 pagesInternational audienceIn this paper we compare wavelet Bayesian rules taking into account th...
In this paper our aim is to provide tools for easily calculating the maxisets of several procedures....
The present paper investigates theoretical performance of various Bayesian wavelet shrinkage rules i...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
We study the Bayesian approach to nonparametric function estimation problems such as nonparametric r...
Bayesian predictive inference provides a coherent description of entire predictive uncertainty throu...
We explore the use of proper priors for variance parameters of certain sparse Bayesian regression mo...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
In all areas of human knowledge, datasets are increasing in both size and complexity, creating the n...
According to both domain expert knowledge and empirical evidence, wavelet coefficients of real signa...
In this paper we propose a block shrinkage method in the wavelet domain for estimating an unknown fu...
Wavelet shrinkage estimation is an increasingly popular method for signal denoising and compression....
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
The availability of complex-structured data has sparked new research directions in statistics and ma...