In the estimation of a dose-response curve, parametric models are straightforward and efficient but subject to model misspecifications; nonparametric methods are robust but less efficient. As a compromise, we propose a semiparametric approach that combines the advantages of parametric and nonparametric curve estimates. In a mixture form, our estimator takes a weighted average of the parametric and nonparametric curve estimates, in which a higher weight is assigned to the estimate with a better model fit. When the parametric model assumption holds, the semiparametric curve estimate converges to the parametric estimate and thus achieves high efficiency; when the parametric model is misspecified, the semiparametric estimate converges to the no...
The aim of this work is practical. We show that the parameters of the widely used operational model ...
The pharmaceutical industry now recognises the importance of the newly defined discipline of pharmac...
In this article we consider monotone nonparametric regression in a Bayesian frame-work. The monotone...
We present a novel nonparametric method for bioassay and benchmark analysis in risk assessment, whic...
This thesis proposes some new model independent or nonparametric methods for estimating the dose-res...
Title: Dose-response curves Author: Martin Hezoučký Department: Department of Probability and Mathem...
Estimation of the causal dose-response curve is an old problem in statistics. In a non parametric mo...
International audienceEstimation methods for nonlinear mixed-effects modelling have considerably imp...
AbstractA nonparametric method for the estimation of a dose-response relation is described. Up to tw...
A major component of quantitative risk assessment involves dose-response modeling. Therein, an appro...
We investigate the estimation issues for count data in dose response model. Inthis thesis, we are co...
Estimation of the causal dose–response curve is an old problem in statistics. In a non-parametric mo...
Dose-response assays are a common and increasingly high throughput method of assessing the toxicity ...
Statistical methods for the analysis of joint-action data require that dose-response information is ...
All forms of life are being exposed to different levels of harmful chemicals that can cause various ...
The aim of this work is practical. We show that the parameters of the widely used operational model ...
The pharmaceutical industry now recognises the importance of the newly defined discipline of pharmac...
In this article we consider monotone nonparametric regression in a Bayesian frame-work. The monotone...
We present a novel nonparametric method for bioassay and benchmark analysis in risk assessment, whic...
This thesis proposes some new model independent or nonparametric methods for estimating the dose-res...
Title: Dose-response curves Author: Martin Hezoučký Department: Department of Probability and Mathem...
Estimation of the causal dose-response curve is an old problem in statistics. In a non parametric mo...
International audienceEstimation methods for nonlinear mixed-effects modelling have considerably imp...
AbstractA nonparametric method for the estimation of a dose-response relation is described. Up to tw...
A major component of quantitative risk assessment involves dose-response modeling. Therein, an appro...
We investigate the estimation issues for count data in dose response model. Inthis thesis, we are co...
Estimation of the causal dose–response curve is an old problem in statistics. In a non-parametric mo...
Dose-response assays are a common and increasingly high throughput method of assessing the toxicity ...
Statistical methods for the analysis of joint-action data require that dose-response information is ...
All forms of life are being exposed to different levels of harmful chemicals that can cause various ...
The aim of this work is practical. We show that the parameters of the widely used operational model ...
The pharmaceutical industry now recognises the importance of the newly defined discipline of pharmac...
In this article we consider monotone nonparametric regression in a Bayesian frame-work. The monotone...