Estimating functions, introduced by Godambe, are a useful tool for constructing estimators. The classical maximum likelihood estimator and the method of moments estimator are special cases of estimators generated as the solution to certain estimating equations. The main advantage of this method is that it does not require knowledge of the full model, but rather of some functionals, such as a number of moments. We define an estimating function Ψ to be a Fisher estimating function if it satisfies Eθ(ΨΨTθ(dΨ/dθ). The motivation for considering this class of estimating functions is that a Fisher estimating function behaves much like the Fisher score, and the estimators generated as solutions to these estimat...
Use of nonparametric model calibration estimators for population total and mean has been considered ...
This paper considers the problem of parameter estimation in a general class of semiparametric models...
Most standard statistical inference procedures rely on model assumptions such as normality, independ...
This thesis is concerned with statistical inference in situations where one is unwilling or unable t...
In many studies, the scientific objective can be formulated in terms of a statistical model indexed ...
The idea of using estimating functions goes a long way back, at least to Karl Pearson's introduction...
The topic of this thesis is estimation of a location parameter in small samples. Chapter 1 is an ove...
Bayesian methodology has been widely explored and applied to broad fields due to its natural ability...
The thesis addresses the study of some basic results used in statistics and estimation of parameters...
1We are most grateful to Kerry Patterson for his constant encouragement and very help-ful comments o...
The aim of statistical analysis and inference is to draw meaningful conclusions. In the case where t...
The dissertation considers semiparametric regression models inspired by statistical problems in ecol...
We study a Bayesian model where we have made specific requests about the parameter values to be esti...
The topic of the thesis is statistical inference from diffusion driven models. The the-ory of estima...
The problem of estimation has figured prominently in the mathematical theory of statistics during t...
Use of nonparametric model calibration estimators for population total and mean has been considered ...
This paper considers the problem of parameter estimation in a general class of semiparametric models...
Most standard statistical inference procedures rely on model assumptions such as normality, independ...
This thesis is concerned with statistical inference in situations where one is unwilling or unable t...
In many studies, the scientific objective can be formulated in terms of a statistical model indexed ...
The idea of using estimating functions goes a long way back, at least to Karl Pearson's introduction...
The topic of this thesis is estimation of a location parameter in small samples. Chapter 1 is an ove...
Bayesian methodology has been widely explored and applied to broad fields due to its natural ability...
The thesis addresses the study of some basic results used in statistics and estimation of parameters...
1We are most grateful to Kerry Patterson for his constant encouragement and very help-ful comments o...
The aim of statistical analysis and inference is to draw meaningful conclusions. In the case where t...
The dissertation considers semiparametric regression models inspired by statistical problems in ecol...
We study a Bayesian model where we have made specific requests about the parameter values to be esti...
The topic of the thesis is statistical inference from diffusion driven models. The the-ory of estima...
The problem of estimation has figured prominently in the mathematical theory of statistics during t...
Use of nonparametric model calibration estimators for population total and mean has been considered ...
This paper considers the problem of parameter estimation in a general class of semiparametric models...
Most standard statistical inference procedures rely on model assumptions such as normality, independ...