Nonlinear heteroscedastic regression models are a widely used class of models in applied statistics, with applications especially in biology, medicine or chemistry. Nonlinearity and variance heterogeneity can make likelihood estimation for a scalar parameter of interest rather inaccurate for small or moderate samples. In this paper, we suggest a new approach to point estimation based on estimating equations obtained from higher-order pivots for the parameter of interest. In particular, we take as an estimating function the modified directed likelihood. This is a higher-order pivotal quantity that can be easily computed in practice for nonlinear heteroscedastic models with normally distributed errors , using a recently developed S-PLUS libra...
It is well-known that use of ordinary least squares for estimation of linear regression model with h...
This paper proposes an improved likelihood-based method to test for first-order moving average in th...
We consider a linear model with normally distributed but heteroscedastic errors. When the error vari...
Nonlinear heteroscedastic regression models are a widely used class of models in applied statistics,...
AbstractThis paper is concerned with the linear regression model in which the variance of the depend...
Point estimators for a scalar parameter of interest in the presence of nuisance parameters can be de...
Likelihood-based approaches, including profile-likelihood, signed- likelihood, sample deviance and p...
An extension of some standard likelihood based procedures to heteroscedastic nonlinear regression mo...
In this paper, we derive general formulae for second-order biases of maximum likelihood estimates wh...
Bias correction, Errors-in-variables model, Heteroskedastic model, Maximum-likelihood estimation,
We discuss an extansion of the nonlinear random effects model from Lindstrom and Bates (1990) by add...
Practical use of modern likelihood asymptotics is still limited by the lack of flexible and easy to ...
Practical use of modern likelihood asymptotics is still limited by the lack of flexible and easy to ...
International audienceThe paper is devoted to the estimation of a nonlinear parametric model of the ...
The paper proposes two different estimation procedures for nonlinear panel data models with a genera...
It is well-known that use of ordinary least squares for estimation of linear regression model with h...
This paper proposes an improved likelihood-based method to test for first-order moving average in th...
We consider a linear model with normally distributed but heteroscedastic errors. When the error vari...
Nonlinear heteroscedastic regression models are a widely used class of models in applied statistics,...
AbstractThis paper is concerned with the linear regression model in which the variance of the depend...
Point estimators for a scalar parameter of interest in the presence of nuisance parameters can be de...
Likelihood-based approaches, including profile-likelihood, signed- likelihood, sample deviance and p...
An extension of some standard likelihood based procedures to heteroscedastic nonlinear regression mo...
In this paper, we derive general formulae for second-order biases of maximum likelihood estimates wh...
Bias correction, Errors-in-variables model, Heteroskedastic model, Maximum-likelihood estimation,
We discuss an extansion of the nonlinear random effects model from Lindstrom and Bates (1990) by add...
Practical use of modern likelihood asymptotics is still limited by the lack of flexible and easy to ...
Practical use of modern likelihood asymptotics is still limited by the lack of flexible and easy to ...
International audienceThe paper is devoted to the estimation of a nonlinear parametric model of the ...
The paper proposes two different estimation procedures for nonlinear panel data models with a genera...
It is well-known that use of ordinary least squares for estimation of linear regression model with h...
This paper proposes an improved likelihood-based method to test for first-order moving average in th...
We consider a linear model with normally distributed but heteroscedastic errors. When the error vari...