We give an overview over the usefulness of the concept of equivariance and invariance in the design of experiments for generalized linear models. In contrast to linear models here pairs of transformations have to be considered which act simultaneously on the experimental settings and on the location parameters in the linear component. Given the transformation of the experimental settings the parameter transformations are not unique and may be nonlinear to make further use of the model structure. The general concepts and results are illustrated by models with gamma distributed response. Locally optimal and maximin efficient design are obtained for the common D- and IMSE-criterion.
翻译:我们概述了通用线性模型实验设计中的等差和变差概念的有用性。与此处的线性模型相反,必须考虑在实验设置和线性组成部分的位置参数上同时发挥作用的对等变换。鉴于实验设置的变异,参数变异并不独特,而且可能非线性,以进一步使用模型结构。一般概念和结果通过带有伽马分布式反应的模型加以说明。为共同的D-和IMSE-Criterion,获得了最优化和最高效的设计。