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SINGULAR PRIOR DISTRIBUTIONS AND ILL-CONDITIONING IN BAYESIAN D-OPTIMAL DESIGN FOR SEVERAL NONLINEAR MODELS

机译:几种非线性模型的贝叶斯D-最优设计中的单数现有分布和病态

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摘要

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.
机译:对于贝叶斯D-Optimal设计,我们将模型参数定义为先前分布的单数分布,使得Fisher信息矩阵的决定因子具有对所有设计的最先前的几何平均值为零。对于这样的先前分配,贝叶斯D-Optimaly标准无法选择设计。对于指数衰减模型,我们在参数的几个基本转换的期望方面表征了先前分配的奇异性。对于分区模型和几种多参数广义线性模型,我们为先前分配的奇点建立了足够的条件。对于广义的线性模型,我们还获得了非奇点的充分条件。在现有文献中,通常建议使用弱信息性的先前分布作为逻辑回归中推断的默认选择。在这里,结果表明,一些推荐的先前分布是奇异的,因此不应用于贝叶斯D-最佳设计。另外,当物理函数因病调节因病出现故障而导致的数值评估而产生的方法是推导和评估贝叶斯D-高效设计,因为重型尾的现有分布通常发生。逻辑回归示出了这些数值方法。

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