Estimating the causal effects of a spatially-varying intervention on a spatially-varying outcome may be subject to non-local confounding (NLC), a phenomenon that can bias estimates when the treatments and outcomes of a given unit are dictated in part by the covariates of other nearby units. In particular, NLC is a challenge for evaluating the effects of environmental policies and climate events on health-related outcomes such as air pollution exposure. This paper first formalizes NLC using the potential outcomes framework, providing a comparison with the related phenomenon of causal interference. Then, it proposes a broadly applicable framework, termed "weather2vec", that uses the theory of balancing scores to learn representations of non-local information into a scalar or vector defined for each observational unit, which is subsequently used to adjust for confounding in conjunction with causal inference methods. The framework is evaluated in a simulation study and two case studies on air pollution where the weather is an (inherently regional) known confounder.
翻译:估计空间变化性干预对空间变化结果的因果关系,可能受到非局部混乱的影响(NLC),这种现象在某一单位的处理和结果部分由附近其他单位的共差决定时,可能会影响估计,特别是,NLC是评价环境政策和气候事件对与健康有关的结果(如空气污染暴露)的影响的挑战。本文件首先使用潜在结果框架将NLC正式确定为NLC, 提供与相关因果干扰现象的比较。然后,它提出了一个广泛适用的框架,称为“weather2vec”,利用平衡计分理论学习非本地信息在为每个观察单位确定的标尺或矢量上的表达,随后将它用于调整与因果推断方法相结合的情况。框架在一项模拟研究和两项关于空气污染的个案研究中进行了评价,因为天气是已知的(必然是区域)相互融合者。