Traditionally Bayesian decision-theoretic design of experiments proceeds by choosing a design to minimise expectation of a given loss function over the space of all designs. The loss function encapsulates the aim of the experiment, and the expectation is taken with respect to the joint distribution of all unknown quantities implied by the statistical model that will be fitted to observed responses. In this paper, an extended framework is proposed whereby the expectation of the loss is taken with respect to a joint distribution implied by an alternative statistical model. Motivation for this includes promoting robustness, ensuring computational feasibility and for allowing realistic prior specification when deriving a design. To aid in exploring the new framework, an asymptotic approximation to the expected loss under an alternative model is derived, and the properties of different loss functions are established. The framework is then demonstrated on a linear regression versus full-treatment model scenario, on estimating parameters of a non-linear model under model discrepancy and a cubic spline model under an unknown number of basis functions.
翻译:传统上,Bayesian决定理论设计实验结果,选择一种设计,在所有设计的空间上最大限度地减少对特定损失功能的预期。损失功能包罗了试验的目的,对统计模型所隐含的所有未知数量进行联合分配,以适应观察到的反应。本文提出一个扩大的框架,根据这一框架,在替代统计模型所隐含的共同分布方面对损失的预期值进行假设。这样做的动机包括促进稳健性、确保计算可行性和在设计时允许现实的事先规格。帮助探索新框架,从一个替代模型中得出对预期损失的无症状近似值,并确立不同损失功能的性质。然后,框架以线性回归与全处理模型设想为基础,根据模型差异估计非线性模型参数,以及根据未知数量的基础功能估计立立体样模型参数。