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Quadrature Methods for Bayesian Optimal Design of Experiments With Nonnormal Prior Distributions

机译:贝叶斯型优化设计与非通知前提分布的实验正常方法

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摘要

Many optimal experimental designs depend on one or more unknown model parameters. In such cases, it is common to use Bayesian optimal design procedures to seek designs that perform well over an entire prior distribution of the unknown model parameter(s). Generally, Bayesian optimal design procedures are viewed as computationally intensive. This is because they require numerical integration techniques to approximate the Bayesian optimality criterion at hand. The most common numerical integration technique involves pseudo Monte Carlo draws from the prior distribution(s). For a good approximation of the Bayesian optimality criterion, a large number of pseudo Monte Carlo draws is required. This results in long computation times. As an alternative to the pseudo Monte Carlo approach, we propose using computationally efficient Gaussian quadrature techniques. Since, for normal prior distributions, suitable quadrature techniques have already been used in the context of optimal experimental design, we focus on quadrature techniques for nonnormal prior distributions. Such prior distributions are appropriate for variance components, correlation coefficients, and any other parameters that are strictly positive or have upper and lower bounds. In this article, we demonstrate the added value of the quadrature techniques we advocate by means of the Bayesian D-optimality criterion in the context of split-plot experiments, but we want to stress that the techniques can be applied to other optimality criteria and other types of experimental designs as well. Supplementary materials for this article are available online.
机译:许多最佳实验设计取决于一个或多个未知的模型参数。在这种情况下,通常使用贝叶斯最佳设计程序来寻求在未知模型参数的整个先前分布中执行的设计。通常,贝叶斯最优设计程序被视为计算密集。这是因为它们需要数值集成技术来近似贝叶斯最优性标准。最常见的数字集成技术涉及伪蒙特卡罗从先前的分布中汲取。对于贝叶斯最优标准的良好近似,需要大量伪蒙特卡罗绘图。这导致了长的计算时间。作为Pseudo Monte Carlo方法的替代方案,我们建议使用计算有效的高斯正交技术。由于对于正常的现有分布,因此在最佳实验设计的背景下已经使用了合适的正交技术,我们专注于非通知现有分布的正交技术。这种现有分布适用于方差分量,相关系数和严格为正或具有上限和下限的任何其他参数。在本文中,我们展示了正交技术的附加值,我们通过贝叶斯D-Optimaly标准在分裂绘图实验的背景下提倡,但我们希望强调这些技术可以应用于其他最优性标准和其他技术实验设计的类型也是如此。本文的补充材料可在线获得。

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