This Lecture Note deals with asymptotic properties, i.e. weak and strong consistency and asymptotic normality, of parameter estimators of nonlinear regression models and nonlinear structural equations under various assumptions on the distribution of the data. The estimation methods involved are nonlinear least squares estimation (NLLSE), nonlinear robust M-estimation (NLRME) and non linear weighted robust M-estimation (NLWRME) for the regression case and nonlinear two-stage least squares estimation (NL2SLSE) and a new method called minimum information estimation (MIE) for the case of structural equations. The asymptotic properties of the NLLSE and the two robust M-estimation methods are derived from further elaborations of results of Jennr...
Abstract: In univariate nonlinear regression models, estimator and test statistics based on (general...
In this article, we study parametric robust estimation in nonlinear regression models with regressor...
summary:The present paper deals with least weighted squares estimator which is a robust estimator an...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
Classical parametric estimation methods applied to nonlinear regression and limited-dependent-variab...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
We study the asymptotic properties of a general class of minimum distance estimators based on L2 nor...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
Classical parametric estimation methods for regression models, including the widely used least-squar...
Part A of the course discusses methods of inference for • Classical Nonlinear Models: We give a gene...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
Robust statistical methods represent important tools for estimating parameters in linear as well as ...
Abstract: In univariate nonlinear regression models, estimator and test statistics based on (general...
In this article, we study parametric robust estimation in nonlinear regression models with regressor...
summary:The present paper deals with least weighted squares estimator which is a robust estimator an...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
Classical parametric estimation methods applied to nonlinear regression and limited-dependent-variab...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
We study the asymptotic properties of a general class of minimum distance estimators based on L2 nor...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
Classical parametric estimation methods for regression models, including the widely used least-squar...
Part A of the course discusses methods of inference for • Classical Nonlinear Models: We give a gene...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
Robust statistical methods represent important tools for estimating parameters in linear as well as ...
Abstract: In univariate nonlinear regression models, estimator and test statistics based on (general...
In this article, we study parametric robust estimation in nonlinear regression models with regressor...
summary:The present paper deals with least weighted squares estimator which is a robust estimator an...