DOI: 10.1214/07-AOS560We propose a new approach for identifying the support points of a locally optimal design when the model is a nonlinear model. In contrast to the commonly used geometric approach, we use an approach based on algebraic tools. Considerations are restricted to models with two parameters, and the general results are applied to often used special cases, including logistic, probit, double exponential and double reciprocal models for binary data, a loglinear Poisson regression model for count data, and the Michaelis-Menten model. The approach, which is also of value for multi-stage experiments, works both with constrained and unconstrained design regions and is relatively easy to implement.Min Yang was supported in part by N...
This paper considers exponential and rational regression models that are nonlinear in some parameter...
Not AvailableIn the present study, the class of nonlinear models, with intrinsically linearly relate...
This chapter is an example-based guide to optimal design for nonlinear regression models. For clarit...
We propose a new approach for identifying the support points of a locally optimal design when the mo...
We extend the approach in [Ann. Statist. 38 (2010) 2499–2524] for iden-tifying locally optimal desig...
This paper concerns locally optimal experimental designs for non-linear regression models. It is bas...
The main aim of this thesis is to review and augment the theory and methods of optimal experimental ...
Finding optimal designs for experiments for non-linear models and dependent data is a challenging ta...
Finding optimal designs for nonlinear models is challenging in general. Although some recent results...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
Most of the design work has focused on the linear regression model due to its simplicity. However, a...
Censoring occurs in many industrial or biomedical ‘time to event’ experiments. Finding efficient des...
We consider maximin and Bayesian D-optimal designs for nonlinear regression models. The maximin crit...
The main subject of this thesis concerns the optimum design of experiments for discriminating betwee...
We consider maximin and Bayesian D -optimal designs for nonlinear regression models. The maximin cri...
This paper considers exponential and rational regression models that are nonlinear in some parameter...
Not AvailableIn the present study, the class of nonlinear models, with intrinsically linearly relate...
This chapter is an example-based guide to optimal design for nonlinear regression models. For clarit...
We propose a new approach for identifying the support points of a locally optimal design when the mo...
We extend the approach in [Ann. Statist. 38 (2010) 2499–2524] for iden-tifying locally optimal desig...
This paper concerns locally optimal experimental designs for non-linear regression models. It is bas...
The main aim of this thesis is to review and augment the theory and methods of optimal experimental ...
Finding optimal designs for experiments for non-linear models and dependent data is a challenging ta...
Finding optimal designs for nonlinear models is challenging in general. Although some recent results...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
Most of the design work has focused on the linear regression model due to its simplicity. However, a...
Censoring occurs in many industrial or biomedical ‘time to event’ experiments. Finding efficient des...
We consider maximin and Bayesian D-optimal designs for nonlinear regression models. The maximin crit...
The main subject of this thesis concerns the optimum design of experiments for discriminating betwee...
We consider maximin and Bayesian D -optimal designs for nonlinear regression models. The maximin cri...
This paper considers exponential and rational regression models that are nonlinear in some parameter...
Not AvailableIn the present study, the class of nonlinear models, with intrinsically linearly relate...
This chapter is an example-based guide to optimal design for nonlinear regression models. For clarit...