peer reviewedA famous characterization theorem due to C. F. Gauss states that the maximum likelihood estimator (MLE) of the parameter in a location family is the sample mean for all samples of all sample sizes if and only if the family is Gaussian. There exist many extensions of this result in diverse directions, most of them focussing on location and scale families. In this paper we propose a unified treatment of this literature by providing general MLE characterization theorems for one-parameter group families (with particular attention on location and scale parameters). In doing so we provide tools for determining whether or not a given such family is MLE-characterizable, and, in case it is, we define the fundamental co...
Reduced-rank restrictions can add useful parsimony to coefficient matrices of multivariate models, b...
Maximum likelihood approach for independent but not identically distributed observations is studied....
For estimation problems, an interesting question is whether the maximum likelihood estimator(MLE) is...
A famous characterization theorem due to C. F. Gauss states that the maximum likelihood estimator (M...
Consider the following problem: if the maximum likelihood estimate of a location parameter of a popu...
A property of distributions admitting sufficient statistics is obtained, connecting the likelihood f...
Abst rac t. We consider maximum likelihood estimation of finite mixture of uniform distributions. We...
International audienceThe modeling of sample distributions with generalized Gaussian density (GGD) h...
textabstractWe construct limiting and small sample distributions of maximum likelihood estimators (...
In finite mixtures of location-scale distributions, if there is no constraint or penalty on the para...
Maximum likelihood is by far the most pop-ular general method of estimation. Its wide-spread accepta...
I will start by presenting some Hellinger accuracy results for the Nonparametric Maximum Likelihood ...
AbstractIt is a well-known result (which can be traced back to Gauss) that the only translation fami...
In many practical situations, we need to estimate different statistical characteristics based on a s...
With the help of certain inequalities concerning the elements of the dispersion matrix of a set of s...
Reduced-rank restrictions can add useful parsimony to coefficient matrices of multivariate models, b...
Maximum likelihood approach for independent but not identically distributed observations is studied....
For estimation problems, an interesting question is whether the maximum likelihood estimator(MLE) is...
A famous characterization theorem due to C. F. Gauss states that the maximum likelihood estimator (M...
Consider the following problem: if the maximum likelihood estimate of a location parameter of a popu...
A property of distributions admitting sufficient statistics is obtained, connecting the likelihood f...
Abst rac t. We consider maximum likelihood estimation of finite mixture of uniform distributions. We...
International audienceThe modeling of sample distributions with generalized Gaussian density (GGD) h...
textabstractWe construct limiting and small sample distributions of maximum likelihood estimators (...
In finite mixtures of location-scale distributions, if there is no constraint or penalty on the para...
Maximum likelihood is by far the most pop-ular general method of estimation. Its wide-spread accepta...
I will start by presenting some Hellinger accuracy results for the Nonparametric Maximum Likelihood ...
AbstractIt is a well-known result (which can be traced back to Gauss) that the only translation fami...
In many practical situations, we need to estimate different statistical characteristics based on a s...
With the help of certain inequalities concerning the elements of the dispersion matrix of a set of s...
Reduced-rank restrictions can add useful parsimony to coefficient matrices of multivariate models, b...
Maximum likelihood approach for independent but not identically distributed observations is studied....
For estimation problems, an interesting question is whether the maximum likelihood estimator(MLE) is...