abstract: Optimal experimental design for generalized linear models is often done using a pseudo-Bayesian approach that integrates the design criterion across a prior distribution on the parameter values. This approach ignores the lack of utility of certain models contained in the prior, and a case is demonstrated where the heavy focus on such hopeless models results in a design with poor performance and with wild swings in coverage probabilities for Wald-type confidence intervals. Design construction using a utility-based approach is shown to result in much more stable coverage probabilities in the area of greatest concern. The pseudo-Bayesian approach can be applied to the problem of optimal design construction under dependent observ...
Many optimal experimental designs depend on one or more unknown model parameters. In such cases, it ...
The optimal design of experiments for nonlinear (or generalized-linear) models can be formulated as ...
In industrial experiments, cost considerations will sometimes make it impractical to design experime...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
Finding optimal designs for experiments for non-linear models and dependent data is a challenging ta...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
Many experiments measure a response that cannot be adequately described by a linear model withnormal...
AbstractThe first investigation is made of designs for screening experiments where the response vari...
For Bayesian D-optimal design, we define a singular prior distribution to be a prior distribution su...
The selection of optimal designs for generalized linear mixed models is complicated by the fact that...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
Bayesian experimental design is a fast growing area of research with many real-world applications. A...
The emphasis in this work is on derivation of optimal Bayes inferences and designs in relatively une...
<p>Many optimal experimental designs depend on one or more unknown model parameters. In such cases, ...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
Many optimal experimental designs depend on one or more unknown model parameters. In such cases, it ...
The optimal design of experiments for nonlinear (or generalized-linear) models can be formulated as ...
In industrial experiments, cost considerations will sometimes make it impractical to design experime...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
Finding optimal designs for experiments for non-linear models and dependent data is a challenging ta...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
Many experiments measure a response that cannot be adequately described by a linear model withnormal...
AbstractThe first investigation is made of designs for screening experiments where the response vari...
For Bayesian D-optimal design, we define a singular prior distribution to be a prior distribution su...
The selection of optimal designs for generalized linear mixed models is complicated by the fact that...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
Bayesian experimental design is a fast growing area of research with many real-world applications. A...
The emphasis in this work is on derivation of optimal Bayes inferences and designs in relatively une...
<p>Many optimal experimental designs depend on one or more unknown model parameters. In such cases, ...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
Many optimal experimental designs depend on one or more unknown model parameters. In such cases, it ...
The optimal design of experiments for nonlinear (or generalized-linear) models can be formulated as ...
In industrial experiments, cost considerations will sometimes make it impractical to design experime...