Criterion choice is such a hard problem in information recovery and in estimation and inference. In the case of inverse problems with noise, can probabilistic laws provide a basis for empirical estimator choice? That is the problem we investigate in this paper. Large Deviations Theory is used to evaluate the choice of estimator in the case of two fundamental situations-problems in modelling data. The probabilistic laws developed demonstrate that each problem has a unique solution-empirical estimator. Whether other members of the empirical estimator family can be associated a particular problem and conditional limit theorem, is an open question
The theory of large deviations refers to a collection of techniques for estimating properties of rar...
Abstract The paper suggests an approximation of Bayesian parameter estimation for the case that data...
In this paper we demonstrate, in a parametric Estimating Equations setting, that the Empirical Likel...
Criterion choice is such a hard problem in information recovery and in estimation and inference. In ...
Criterion choice is such a hard problem in information recovery and in estimation and inference. In ...
Criterion choice is such a hard problem in information recovery and in estimation and inference. In ...
Chapter 1 is a non technical introduction to the thesis. In chapter 2, Basics of Large Deviation The...
This paper presents a general approach to statistical problems with criteria based on probabilities ...
Abstract: Considering a nonparametric framework, we state a sharp large devi-ation principle for the...
The theory of large deviations deals with rates at which probabilities of certain events decay as a ...
This thesis consists of two papers related to large deviation results associated with importance sam...
We present a general approach to statistical problems with criteria based on probabilities of large ...
Abstract This thesis consists of two papers related to large deviation results associated with impor...
We find conditions under which the sequence of empirical means of associated random variables, , sat...
The theory of large deviations deals with rates at which probabilities of certain events decay as a ...
The theory of large deviations refers to a collection of techniques for estimating properties of rar...
Abstract The paper suggests an approximation of Bayesian parameter estimation for the case that data...
In this paper we demonstrate, in a parametric Estimating Equations setting, that the Empirical Likel...
Criterion choice is such a hard problem in information recovery and in estimation and inference. In ...
Criterion choice is such a hard problem in information recovery and in estimation and inference. In ...
Criterion choice is such a hard problem in information recovery and in estimation and inference. In ...
Chapter 1 is a non technical introduction to the thesis. In chapter 2, Basics of Large Deviation The...
This paper presents a general approach to statistical problems with criteria based on probabilities ...
Abstract: Considering a nonparametric framework, we state a sharp large devi-ation principle for the...
The theory of large deviations deals with rates at which probabilities of certain events decay as a ...
This thesis consists of two papers related to large deviation results associated with importance sam...
We present a general approach to statistical problems with criteria based on probabilities of large ...
Abstract This thesis consists of two papers related to large deviation results associated with impor...
We find conditions under which the sequence of empirical means of associated random variables, , sat...
The theory of large deviations deals with rates at which probabilities of certain events decay as a ...
The theory of large deviations refers to a collection of techniques for estimating properties of rar...
Abstract The paper suggests an approximation of Bayesian parameter estimation for the case that data...
In this paper we demonstrate, in a parametric Estimating Equations setting, that the Empirical Likel...