MRC Clinical Trials Unit at UCL, London, UK.
Julius Center for Health Sciences and Primary Care, University Medical Center, Utrecht University, Utrecht, The Netherlands.
Biom J. 2023 Dec;65(8):e2300069. doi: 10.1002/bimj.202300069. Epub 2023 Sep 29.
The marginality principle guides analysts to avoid omitting lower-order terms from models in which higher-order terms are included as covariates. Lower-order terms are viewed as "marginal" to higher-order terms. We consider how this principle applies to three cases: regression models that may include the ratio of two measured variables; polynomial transformations of a measured variable; and factorial arrangements of defined interventions. For each case, we show that which terms or transformations are considered to be lower-order, and therefore marginal, depends on the scale of measurement, which is frequently arbitrary. Understanding the implications of this point leads to an intuitive understanding of the curse of dimensionality. We conclude that the marginality principle may be useful to analysts in some specific cases but caution against invoking it as a context-free recipe.
边缘性原则指导分析人员避免在包含高阶项作为协变量的模型中省略低阶项。低阶项被视为高阶项的“边缘”。我们考虑了这一原则如何适用于三种情况:可能包含两个测量变量比的回归模型;测量变量的多项式变换;以及定义干预措施的因子排列。对于每种情况,我们都表明,哪些术语或变换被认为是低阶的,因此是边缘的,这取决于测量的尺度,而尺度通常是任意的。理解这一点的含义会导致对维度诅咒的直观理解。我们的结论是,边缘性原则在某些特定情况下可能对分析人员有用,但我们警告不要将其作为一种无上下文的规则来调用。