Regression models are routinely used in many applied sciences for describing the relationship between a response variable and an independent variable. Statistical inferences on the regression parameters are often performed using the maximum likelihood estimators (MLE). In the case of nonlinear models the standard errors of MLE are often obtained by linearizing the nonlinear function around the true parameter and by appealing to large sample theory. In this article we demonstrate, through computer simulations, that the resulting asymptotic Wald confidence intervals cannot be trusted to achieve the desired confidence levels. Sometimes they could underestimate the true nominal level and are thus liberal. Hence one needs to be cautious in using...
The aim of this thesis is a comprehensive description of the properties of a nonlinear least squares...
Nonlinear mixed-effects models are being widely used for the analysis of longitudinal data, especial...
Estimation of nonlinear regression quality leads to examination of quality of parameter estimates, a...
Regression models are routinely used in many applied sciences for describing the rela-tionship betwe...
Regression models are routinely used in many applied sciences for describing the relationship betwee...
Toxicologists and pharmacologists often describe toxicity of a chemical using parameters of a nonlin...
Previously, we explored generating data using four different curved source functions with normally d...
Nonlinear regression models are commonly used in dose-response studies, especially when researchers ...
This work is motivated by a meta-analysis case study on antipsychotic medications. The Michaelis–Men...
More than thirty years ago Halbert White inaugurated a “modelrobust” form of statistical inference b...
[1] Confidence intervals based on classical regression theories augmented to include prior informati...
Inference in hierarchical nonlinear models needs careful consideration about targeting parameters th...
In this paper we analyse, using Monte Carlo simulation, the possible consequences of incorrect assum...
Nonlinear mixed‐effects models are being widely used for the analysis of longitudinal data, especial...
This work studies the properties of the maximum likelihood estimator (MLE) of a non-linear model wi...
The aim of this thesis is a comprehensive description of the properties of a nonlinear least squares...
Nonlinear mixed-effects models are being widely used for the analysis of longitudinal data, especial...
Estimation of nonlinear regression quality leads to examination of quality of parameter estimates, a...
Regression models are routinely used in many applied sciences for describing the rela-tionship betwe...
Regression models are routinely used in many applied sciences for describing the relationship betwee...
Toxicologists and pharmacologists often describe toxicity of a chemical using parameters of a nonlin...
Previously, we explored generating data using four different curved source functions with normally d...
Nonlinear regression models are commonly used in dose-response studies, especially when researchers ...
This work is motivated by a meta-analysis case study on antipsychotic medications. The Michaelis–Men...
More than thirty years ago Halbert White inaugurated a “modelrobust” form of statistical inference b...
[1] Confidence intervals based on classical regression theories augmented to include prior informati...
Inference in hierarchical nonlinear models needs careful consideration about targeting parameters th...
In this paper we analyse, using Monte Carlo simulation, the possible consequences of incorrect assum...
Nonlinear mixed‐effects models are being widely used for the analysis of longitudinal data, especial...
This work studies the properties of the maximum likelihood estimator (MLE) of a non-linear model wi...
The aim of this thesis is a comprehensive description of the properties of a nonlinear least squares...
Nonlinear mixed-effects models are being widely used for the analysis of longitudinal data, especial...
Estimation of nonlinear regression quality leads to examination of quality of parameter estimates, a...