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Generalized Bayesian D criterion for single-stratum and multistratum designs

机译:单层和多层设计的广义贝叶斯D准则

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摘要

The Bayesian D criterion modifies the D-optimality approach to reduce dependence of the selected design on an assumed model. This criterion has been applied to select various single-stratum designs for completely randomized experiments when the number of effects is greater than the sample size. In many industrial experiments, complete randomization is sometimes expensive or infeasible, and hence, designs used for the experiments often have multistratum structures. However, the original Bayesian D criterion was developed under the framework of single-stratum structures and cannot be applied to select multistratum designs. In this paper, we study how to extend the Bayesian approach for more complicated experiments and develop the generalized Bayesian D criterion, which generalizes the original Bayesian D criterion and can be applied to select single-stratum and multistratum designs for various experiments when the number of effects is greater than the rank of the model matrix.
机译:贝叶斯D准则修改了D优化方法,以减少所选设计对假定模型的依赖性。当效应数大于样本量时,该标准已被用于选择各种单层设计用于完全随机实验。在许多工业实验中,完全随机化有时是昂贵的或不可行的,因此,用于实验的设计通常具有多层结构。但是,原始的贝叶斯D准则是在单层结构的框架下开发的,不能应用于选择多层设计。在本文中,我们研究如何将贝叶斯方法扩展到更复杂的实验中,并开发出广义的贝叶斯D准则,该准则对原始贝叶斯D准则进行了泛化,并且可以应用于选择多个实验的单层和多层设计。效果大于模型矩阵的等级。

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