The purpose of order-of-addition (OofA) experiments is to identify the best order in a sequence of m components in a system or treatment. Such experiments may be analysed by various regression models, the most popular ones being based on pairwise ordering (PWO) factors or on component-position (CP) factors. This paper reviews these models and extensions and proposes a new class of models based on response surface (RS) regression using component position numbers as predictor variables. Using two published examples, it is shown that RS models can be quite competitive. In case of model uncertainty, we advocate the use of model averaging for analysis. The averaging idea leads naturally to a design approach based on a compound optimality criterion assigning weights to each candidate model.
翻译:添加顺序试验的目的是确定系统或处理中一组 m 组件的最优顺序,这种试验可以由各种回归模型进行分析,最受欢迎的模型是双向订购系数或组件位置系数(CP),本文审查这些模型和扩展,并提议以反应表回归值(RS)为根据的新类型的模型,其中采用作为预测或变量的组合位置数字。使用两个已公布的例子,表明RS模型具有相当的竞争力。在模型不确定的情况下,我们主张使用平均模型进行分析。平均概念自然导致一种设计方法,其基础是给每个候选模型分配权重的复合最佳性标准。