Usually, in the Theory of Optimal Experimental Design the model is assumed to be known at the design stage. In practice, however, more competing models may be plausible for the same data. Thus, a possibility is to find an optimal design which take both model discrimination and parameter estimation into consideration. In this paper we follow a different approach: we find a design which is optimum for estimation purposes but is also robust to a misspecified model. In other words, the optimum design is "good" for estimating the unknown parameters even if the assumed model is not correc
Recent progress in model-robust designs has focused on maximiz-1 ing estimation capacities. However,...
Much work on optimal discrimination designs assumes that the models of interest are fullyspecified, ...
ABSTRACT: This paper points out that so-called optimal designs for non linear regression models are ...
Usually, in the Theory of Optimal Experimental Design the model is assumed to be known at the design...
Usually, in the Theory of Optimal experimental design the model is assumed to be known at the design...
Abstract: The main drawback of the optimal design approach is that it assumes the statistical model ...
The main drawback of the optimal design approach is that it assumes the statistical model is known. ...
Mathematical modelling Optimal experimental design ma vail sed Therefore, model discrimination may b...
In the present paper ideas of Atkinson & Fedorov (1975) are generalized and clarified. The results i...
International audienceIn design of experiments for nonlinear regression model identification, the de...
The presence of missing values complicates statistical analyses. In design of experiments, missing v...
In industrial experiments, cost considerations will sometimes make it impractical to design experime...
In design of experiments for nonlinear regression model identifica-tion, the design criterion depend...
Abstract—This paper focuses on the problem of robust exper-iment design, i.e., how to design an inpu...
Nonlinear models are common in pharmacokinetics and pharmacodynamics. To date, most work in design i...
Recent progress in model-robust designs has focused on maximiz-1 ing estimation capacities. However,...
Much work on optimal discrimination designs assumes that the models of interest are fullyspecified, ...
ABSTRACT: This paper points out that so-called optimal designs for non linear regression models are ...
Usually, in the Theory of Optimal Experimental Design the model is assumed to be known at the design...
Usually, in the Theory of Optimal experimental design the model is assumed to be known at the design...
Abstract: The main drawback of the optimal design approach is that it assumes the statistical model ...
The main drawback of the optimal design approach is that it assumes the statistical model is known. ...
Mathematical modelling Optimal experimental design ma vail sed Therefore, model discrimination may b...
In the present paper ideas of Atkinson & Fedorov (1975) are generalized and clarified. The results i...
International audienceIn design of experiments for nonlinear regression model identification, the de...
The presence of missing values complicates statistical analyses. In design of experiments, missing v...
In industrial experiments, cost considerations will sometimes make it impractical to design experime...
In design of experiments for nonlinear regression model identifica-tion, the design criterion depend...
Abstract—This paper focuses on the problem of robust exper-iment design, i.e., how to design an inpu...
Nonlinear models are common in pharmacokinetics and pharmacodynamics. To date, most work in design i...
Recent progress in model-robust designs has focused on maximiz-1 ing estimation capacities. However,...
Much work on optimal discrimination designs assumes that the models of interest are fullyspecified, ...
ABSTRACT: This paper points out that so-called optimal designs for non linear regression models are ...