In some estimation problems, especially in applications dealing with information theory, signal processing and biology, theory provides us with additional information allowing us to restrict the parameter space to a finite number of points. In this case, we speak of discrete parameter models. Even though the problem is quite old and has interesting connections with testing and model selection, asymptotic theory for these models has hardly ever been studied. Therefore, we discuss consistency, asymptotic distribution theory, information inequalities and their relations with efficiency and superefficiency for a general class of m-estimators
. In statistical analyses the complexity of a chosen model is often related to the size of available...
In statistical analyses the complexity of a chosen model is often related to the size of available d...
This thesis deals with the study of estimators' performance in signal processing. The focus is the a...
In some estimation problems, especially in applications dealing with information theory, signal proc...
summary:Disparities of discrete distributions are introduced as a natural and useful extension of th...
The thesis examines statistical inference for discrete distributions under parameter orthogonality ...
AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on a...
International audienceThis article concerns maximum-likelihood estimation for discrete time homogene...
We consider the asymptotic consistency of maximum likelihood parameter estimation for dynamical syst...
AbstractIn statistical analyses the complexity of a chosen model is often related to the size of ava...
We study the properties of the MDL (or maximum penalized complexity) estimator fo...
summary:The paper investigates the relation between maximum likelihood and minimum $I$-divergence es...
AbstractStatistical analyses commonly make use of models that suffer from loss of identifiability. I...
We consider the asymptotic behavior of a Bayesian parameter estimation method under discrete station...
Many statistical models over a discrete sample space often face the computational difficulty of the ...
. In statistical analyses the complexity of a chosen model is often related to the size of available...
In statistical analyses the complexity of a chosen model is often related to the size of available d...
This thesis deals with the study of estimators' performance in signal processing. The focus is the a...
In some estimation problems, especially in applications dealing with information theory, signal proc...
summary:Disparities of discrete distributions are introduced as a natural and useful extension of th...
The thesis examines statistical inference for discrete distributions under parameter orthogonality ...
AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on a...
International audienceThis article concerns maximum-likelihood estimation for discrete time homogene...
We consider the asymptotic consistency of maximum likelihood parameter estimation for dynamical syst...
AbstractIn statistical analyses the complexity of a chosen model is often related to the size of ava...
We study the properties of the MDL (or maximum penalized complexity) estimator fo...
summary:The paper investigates the relation between maximum likelihood and minimum $I$-divergence es...
AbstractStatistical analyses commonly make use of models that suffer from loss of identifiability. I...
We consider the asymptotic behavior of a Bayesian parameter estimation method under discrete station...
Many statistical models over a discrete sample space often face the computational difficulty of the ...
. In statistical analyses the complexity of a chosen model is often related to the size of available...
In statistical analyses the complexity of a chosen model is often related to the size of available d...
This thesis deals with the study of estimators' performance in signal processing. The focus is the a...