AbstractThis paper is concerned with the linear regression model in which the variance of the dependent variable is proportional to an unknown power of its expectation. A nonlinear least squares estimator for the model is derived and shown to be strongly consistent and asymptotically normally distributed. Under the assumption of normality, an iterative procedure is suggested to obtain maximum likelihood estimates of the model. The procedure is then shown to converge
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
In this paper we consider a unified approach for fitting conditionally nonlinear time series models ...
Asymptotic Properties of the Maximum Likelihood Estimators in the Nonlinear Regression Model with No...
AbstractThis paper is concerned with the linear regression model in which the variance of the depend...
We consider a linear model with normally distributed but heteroscedastic errors. When the error vari...
International audienceThe paper is devoted to the estimation of a nonlinear parametric model of the ...
The purpose of this research is to propose a robust estimate for the parameters of a nonlinear regre...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
Nonlinear heteroscedastic regression models are a widely used class of models in applied statistics,...
Technische Informationsbibliothek Hannover: RN 7349 (89) / FIZ - Fachinformationszzentrum Karlsruhe ...
Consider the heteroscedastic polynomial regression model $ Y = \beta_0 + \beta_1X + ... + \beta_pX^...
This thesis considers the problem of estimating limited dependent variable models when the latent re...
In this paper, we consider the problem of estimation of a regression model with both linear and nonl...
The asymptotic properties of the least squares estimator are derived for a non regular nonlinear mod...
For the nonlinear regression model y t = X t (fi) t where the vector c is distributed N(0,Q(0)) it i...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
In this paper we consider a unified approach for fitting conditionally nonlinear time series models ...
Asymptotic Properties of the Maximum Likelihood Estimators in the Nonlinear Regression Model with No...
AbstractThis paper is concerned with the linear regression model in which the variance of the depend...
We consider a linear model with normally distributed but heteroscedastic errors. When the error vari...
International audienceThe paper is devoted to the estimation of a nonlinear parametric model of the ...
The purpose of this research is to propose a robust estimate for the parameters of a nonlinear regre...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
Nonlinear heteroscedastic regression models are a widely used class of models in applied statistics,...
Technische Informationsbibliothek Hannover: RN 7349 (89) / FIZ - Fachinformationszzentrum Karlsruhe ...
Consider the heteroscedastic polynomial regression model $ Y = \beta_0 + \beta_1X + ... + \beta_pX^...
This thesis considers the problem of estimating limited dependent variable models when the latent re...
In this paper, we consider the problem of estimation of a regression model with both linear and nonl...
The asymptotic properties of the least squares estimator are derived for a non regular nonlinear mod...
For the nonlinear regression model y t = X t (fi) t where the vector c is distributed N(0,Q(0)) it i...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
In this paper we consider a unified approach for fitting conditionally nonlinear time series models ...
Asymptotic Properties of the Maximum Likelihood Estimators in the Nonlinear Regression Model with No...