International audienceIn this article, we present some specific aspects of symmetric Gamma process mixtures for use in regression models. First we propose a new Gibbs sampler for simulating the posterior. The algorithm is tested on two examples, the mean regression problem with normal errors, and the reconstruction of two dimensional CT images. In a second time, we establish posterior rates of convergence related to the mean regression problem with normal errors. For location-scale and location-modulation mixtures the rates are adaptive over Holder classes, and in the case of location-modulation mixtures are nearly optimal
Motivated by the analysis of a Positron Emission Tomography (PET) imaging data considered in Bowen e...
We study location-scale mixture priors for nonparametric statistical problems, including multivariat...
The estimation of asset return distributions is crucial for determining optimal trading strategies. ...
International audienceIn this article, we present some specific aspects of symmetric Gamma process m...
We define a new class of random probability measures, approximating the well-known normalized genera...
The Gamma mixture model is a flexible probability distribution for representing beliefs about scale ...
In this article, a subjective Bayesian approach is followed to derive estimators for the parameters ...
The authors study modeling and inference with the Elliptical Gamma Distribution (EGD). In particular...
This paper presents two types of symmetric scale mixture probability distributions which include the...
iii Mixture distributions are typically used to model data in which each observation be-longs to one...
A new class of random probability measures, approximating the well-known normalized generalized gamm...
This paper studies mixture modeling using the Elliptical Gamma distribution (EGD)---a distribution t...
The estimation of asset return distributions is crucial for determining optimal trading strategies. ...
Posterior distributions for mixture models often have multiple modes, particularly near the boundari...
We study mixture modeling using the elliptical gamma (EG) distribution, a non-Gaussian distribution ...
Motivated by the analysis of a Positron Emission Tomography (PET) imaging data considered in Bowen e...
We study location-scale mixture priors for nonparametric statistical problems, including multivariat...
The estimation of asset return distributions is crucial for determining optimal trading strategies. ...
International audienceIn this article, we present some specific aspects of symmetric Gamma process m...
We define a new class of random probability measures, approximating the well-known normalized genera...
The Gamma mixture model is a flexible probability distribution for representing beliefs about scale ...
In this article, a subjective Bayesian approach is followed to derive estimators for the parameters ...
The authors study modeling and inference with the Elliptical Gamma Distribution (EGD). In particular...
This paper presents two types of symmetric scale mixture probability distributions which include the...
iii Mixture distributions are typically used to model data in which each observation be-longs to one...
A new class of random probability measures, approximating the well-known normalized generalized gamm...
This paper studies mixture modeling using the Elliptical Gamma distribution (EGD)---a distribution t...
The estimation of asset return distributions is crucial for determining optimal trading strategies. ...
Posterior distributions for mixture models often have multiple modes, particularly near the boundari...
We study mixture modeling using the elliptical gamma (EG) distribution, a non-Gaussian distribution ...
Motivated by the analysis of a Positron Emission Tomography (PET) imaging data considered in Bowen e...
We study location-scale mixture priors for nonparametric statistical problems, including multivariat...
The estimation of asset return distributions is crucial for determining optimal trading strategies. ...