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Statistica Sinica 28 (2018), 505-525

SINGULAR PRIOR DISTRIBUTIONS AND
ILL-CONDITIONING IN BAYESIAN D-OPTIMAL
DESIGN FOR SEVERAL NONLINEAR MODELS
Timothy W. Waite
University of Manchester

Abstract: For Bayesian D-optimal design, we define a singular prior distribution for the model parameters as a prior distribution such that the determinant of the Fisher information matrix has a prior geometric mean of zero for all designs. For such a prior distribution, the Bayesian D-optimality criterion fails to select a design. For the exponential decay model, we characterize singularity of the prior distribution in terms of the expectations of a few elementary transformations of the parameter. For a compartmental model and several multi-parameter generalized linear models, we establish sufficient conditions for singularity of a prior distribution. For the generalized linear models we also obtain sufficient conditions for non-singularity. In the existing literature, weakly informative prior distributions are commonly recommended as a default choice for inference in logistic regression. Here it is shown that some of the recommended prior distributions are singular, and hence should not be used for Bayesian D-optimal design. Additionally, methods are developed to derive and assess Bayesian D-efficient designs when numerical evaluation of the objective function fails due to ill-conditioning, as often occurs for heavy-tailed prior distributions. These numerical methods are illustrated for logistic regression.

Key words and phrases: Compartmental model, exponential decay model, generalized linear model, ill-conditioning, logistic regression.

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