Locally optimal designs for nonlinear models require a single set of nominal values for the unknown parameters.An alternative is the maximin approach that allows the user to specify a range of values for each parameter ofinterest. However, the maximin approach is difficult because we first have to determine the locally optimal designfor each set of nominal values before maximin types of optimal designs can be found via a nested optimizationprocess. We show that particle swarm optimization (PSO) techniques can solve such complex optimizationproblems effectively. We demonstrate numerical results from PSO can help find, for the first time, formulae forstandardized maximin D-optimal designs for nonlinear model with 3 or 4 parameters on the comp...
A general model for enzyme kinetics with inhibition, the "mixed" inhibition model, simplifies to the...
Particle Swarm Optimization (PSO) is a meta-heuristic algorithm that has been shown to be successful...
We extend the approach in [Ann. Statist. 38 (2010) 2499–2524] for iden-tifying locally optimal desig...
Locally optimal designs for nonlinear models require a single set of nominal values for the unknown ...
We consider two frequently used PK/PD models and provide closed form descriptions of locally optimal...
When a model-based approach is appropriate, an optimal design can guide how tocollect data judicious...
We find closed-form expressions for the D-optimum designs for three- and four-parameter nonlinear mo...
The theory of optimal experimental design provides insightful guidance on resource allocation for ma...
For the compartmental model we determine optimal designs, which are robust against misspecifications...
For an important example from the class of compartmental models we determine optimal designs, which ...
In this paper we present a new method for determining optimal designs for enzyme inhibition kinetic...
Finding optimal designs for nonlinear models is challenging in general. Although some recent results...
Finding a model-based optimal design that can optimally discriminate among a class of plausible mode...
Computing proposed exact $G$-optimal designs for response surface models is a difficult computation ...
Implementing optimal design can provide the most accurate statistical inference with minimal cost. H...
A general model for enzyme kinetics with inhibition, the "mixed" inhibition model, simplifies to the...
Particle Swarm Optimization (PSO) is a meta-heuristic algorithm that has been shown to be successful...
We extend the approach in [Ann. Statist. 38 (2010) 2499–2524] for iden-tifying locally optimal desig...
Locally optimal designs for nonlinear models require a single set of nominal values for the unknown ...
We consider two frequently used PK/PD models and provide closed form descriptions of locally optimal...
When a model-based approach is appropriate, an optimal design can guide how tocollect data judicious...
We find closed-form expressions for the D-optimum designs for three- and four-parameter nonlinear mo...
The theory of optimal experimental design provides insightful guidance on resource allocation for ma...
For the compartmental model we determine optimal designs, which are robust against misspecifications...
For an important example from the class of compartmental models we determine optimal designs, which ...
In this paper we present a new method for determining optimal designs for enzyme inhibition kinetic...
Finding optimal designs for nonlinear models is challenging in general. Although some recent results...
Finding a model-based optimal design that can optimally discriminate among a class of plausible mode...
Computing proposed exact $G$-optimal designs for response surface models is a difficult computation ...
Implementing optimal design can provide the most accurate statistical inference with minimal cost. H...
A general model for enzyme kinetics with inhibition, the "mixed" inhibition model, simplifies to the...
Particle Swarm Optimization (PSO) is a meta-heuristic algorithm that has been shown to be successful...
We extend the approach in [Ann. Statist. 38 (2010) 2499–2524] for iden-tifying locally optimal desig...