The generation of decision-theoretic Bayesian optimal designs is complicated by the significant computational challenge of minimising an analytically intractable expected loss function over a, potentially, high-dimensional design space. A new general approach for approximately finding Bayesian optimal designs is proposed which uses computationally efficient normal-based approximations to posterior summaries to aid in approximating the expected loss. This new approach is demonstrated on illustrative, yet challenging, examples including hierarchical models for blocked experiments, and experimental aims of parameter estimation and model discrimination. Where possible, the results of the proposed methodology are compared, both in terms of perfo...
Alphabetical optimal designs are found by minimising a scalar function of the inverseFisher informat...
Bayesian optimal design is considered for experiments where it is hypothesised that the responses ar...
Finding Bayesian optimal designs for nonlinear models is a difficult task because the optimality cri...
The generation of decision-theoretic Bayesian optimal designs is complicated by the significant comp...
Traditionally Bayesian decision-theoretic design of experiments proceeds by choosing a design to min...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
The emphasis in this work is on derivation of optimal Bayes inferences and designs in relatively une...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
Bayesian experimental design is a fast growing area of research with many real-world applications. A...
Thesis: S.M., Massachusetts Institute of Technology, Computation for Design and Optimization Program...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
<p>Many optimal experimental designs depend on one or more unknown model parameters. In such cases, ...
Many optimal experimental designs depend on one or more unknown model parameters. In such cases, it ...
Alphabetical optimal designs are found by minimising a scalar function of the inverseFisher informat...
Bayesian optimal design is considered for experiments where it is hypothesised that the responses ar...
Finding Bayesian optimal designs for nonlinear models is a difficult task because the optimality cri...
The generation of decision-theoretic Bayesian optimal designs is complicated by the significant comp...
Traditionally Bayesian decision-theoretic design of experiments proceeds by choosing a design to min...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
The emphasis in this work is on derivation of optimal Bayes inferences and designs in relatively une...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
Bayesian experimental design is a fast growing area of research with many real-world applications. A...
Thesis: S.M., Massachusetts Institute of Technology, Computation for Design and Optimization Program...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
<p>Many optimal experimental designs depend on one or more unknown model parameters. In such cases, ...
Many optimal experimental designs depend on one or more unknown model parameters. In such cases, it ...
Alphabetical optimal designs are found by minimising a scalar function of the inverseFisher informat...
Bayesian optimal design is considered for experiments where it is hypothesised that the responses ar...
Finding Bayesian optimal designs for nonlinear models is a difficult task because the optimality cri...