I congratulate Dupont, Wood and Augustin (DWA hereon) for providing an easy-to-implement method for estimation in the presence of spatial confounding, and for addressing some of the complicated aspects on the topic. The method regresses the covariate of interest on spatial basis functions and uses the residuals of this model in an outcome regression. The authors show that, if the covariate is not completely spatial, this approach leads to consistent estimation of the conditional association between the exposure and the outcome. Below I discuss conceptual and operational issues that are fundamental to inference in spatial settings: (i) the target quantity and its interpretability, (ii) the non-spatial aspect of covariates and their relative spatial scales, and (iii) the impact of spatial smoothing. While DWA provide some insights on these issues, I believe that the audience might benefit from a deeper discussion. In what follows, I focus on the setting where a researcher is interested in interpreting the relationship between a given covariate and an outcome. I refer to the covariate of interest as the exposure to differentiate it from the rest.
翻译:我祝贺Dupont、Wood和Augustin(DWAON)在空间混乱的情况下提供了一种易于执行的估算方法,并解决了这一专题的一些复杂方面。这种方法在空间功能上使兴趣的共变退了,并在结果回归中利用了这一模型的剩余部分。作者们表明,如果共变不是完全空间性的,这种办法导致对接触和结果之间的有条件联系作出一致的估计。下面我讨论对空间环境中的推断至关重要的概念和业务问题:(一) 目标数量及其可解释性,(二) 共变非空间方面及其相对空间范围,以及(三) 空间平滑的影响。虽然DWA提供一些关于这些问题的见解,但我相信听众可能会从更深入的讨论中获益。在下文,我着重谈谈研究者对解释特定共变和结果之间的关系感兴趣的背景。我提到兴趣的交替是将其与其余部分区别开来。