The authors study modeling and inference with the Elliptical Gamma Distribution (EGD). In particular, Maximum likelihood (ML) estimation for EGD scatter matrices is considered, a task for which the authors present new fixed-point algorithms. The algorithms are shown to be efficient and convergent to global optima despite non-convexity. Moreover, they turn out to be much faster than both a well-known iterative algorithm of Kent Tyler and sophisticated manifold optimization algorithms. Subsequently, the ML algorithms are invoked as subroutines for estimating parameters of a mixture of EGDs. The performance of the methods is illustrated on the task of modeling natural image statistics—the proposed EGD mixture model yields the most parsimonious...
SUMMARY. In this paper we study matrix variate elliptically contoured distributions that admit a nor...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
Abstract We consider maximum likelihood estimation for Gaussian Mixture Models (Gmm s). This task i...
This paper studies mixture modeling using the Elliptical Gamma distribution (EGD)—a distri-bution th...
We study mixture modeling using the elliptical gamma (EG) distribution, a non-Gaussian distribution ...
In this paper, we propose a Bayesian inference method for the generalized Gamma mixture model (GΓMM)...
Mixtures of elliptically-contoured distributions are highly versatile at modeling real-world probabi...
AbstractIn this paper we are concerned with Bayesian statistical inference for a class of elliptical...
The Gamma mixture model is a flexible probability distribution for representing beliefs about scale ...
We address the estimation problem for general finite mixture models, with a particular focus on the ...
International audienceIn this article, we present some specific aspects of symmetric Gamma process m...
This work deals with elliptical Wishart distributions on the set of symmetric positive definite matr...
We introduce in this work the notion of a generalized mixture and propose some methods for estimatin...
AbstractLaplacian mixture models have been used to deal with heavy-tailed distributions in data mode...
Finite mixtures of multivariate skew distributions have become increasingly popular in recent years ...
SUMMARY. In this paper we study matrix variate elliptically contoured distributions that admit a nor...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
Abstract We consider maximum likelihood estimation for Gaussian Mixture Models (Gmm s). This task i...
This paper studies mixture modeling using the Elliptical Gamma distribution (EGD)—a distri-bution th...
We study mixture modeling using the elliptical gamma (EG) distribution, a non-Gaussian distribution ...
In this paper, we propose a Bayesian inference method for the generalized Gamma mixture model (GΓMM)...
Mixtures of elliptically-contoured distributions are highly versatile at modeling real-world probabi...
AbstractIn this paper we are concerned with Bayesian statistical inference for a class of elliptical...
The Gamma mixture model is a flexible probability distribution for representing beliefs about scale ...
We address the estimation problem for general finite mixture models, with a particular focus on the ...
International audienceIn this article, we present some specific aspects of symmetric Gamma process m...
This work deals with elliptical Wishart distributions on the set of symmetric positive definite matr...
We introduce in this work the notion of a generalized mixture and propose some methods for estimatin...
AbstractLaplacian mixture models have been used to deal with heavy-tailed distributions in data mode...
Finite mixtures of multivariate skew distributions have become increasingly popular in recent years ...
SUMMARY. In this paper we study matrix variate elliptically contoured distributions that admit a nor...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
Abstract We consider maximum likelihood estimation for Gaussian Mixture Models (Gmm s). This task i...