Causal effects may vary among individuals and can even be of opposite signs. When serious effect heterogeneity exists, the population average causal effect might be uninformative. Due to the fundamental problem of causality, individual causal effects (ICEs) cannot be retrieved from cross-sectional data. In crossover studies though, it is accepted that ICEs can be estimated under the assumptions of no carryover effects and time invariance of potential outcomes. For other longitudinal data with time-varying exposures, a generic potential-outcome formulation with appropriate statistical assumptions to identify ICEs is lacking. We present a general framework for causal-effect heterogeneity in which individual-specific effect modification is parameterized with a latent variable, the receptiveness factor. If the exposure varies over time, then the repeated measurements contain information on an individual's level of this receptiveness factor. Therefore, we study the conditional distribution of the ICE given all factual information of an individual. This novel conditional random variable is referred to as the cross-world causal effect (CWCE). For known causal structures and time-varying exposures, the variability of the CWCE reduces with increasing number of repeated measurements. If the limiting distribution of the CWCE is degenerate and when the outcome model as well as the latent-variable distributions are well specified, then the ICE can be estimated consistently. The findings are illustrated with examples in which the cause-effect relations can be parameterized as (generalized) linear mixed assignments.
翻译:当存在严重的影响差异性时,人口平均因果效应可能是不知情的。由于因果关系这一根本问题,无法从跨部门数据中获得个别因果效应(ICES),但在交叉研究中,可以接受的是,ICE可以在没有结转效应和潜在结果时间变化的假设下估算出,对于具有时间变化暴露的其他纵向数据来说,缺乏一种通用的潜在结果配方,并有适当的统计假设来识别ICE。我们提出了一个因果效应异性差异性的一般框架,其中个人特有效应的改变以潜在的变量为参数,即接受性因素。如果暴露时间不同,那么重复的测量包含个人接受因素水平的信息。因此,我们研究ICE在个人所有事实信息中有条件的分布。这个新的有条件随机变量可以称为跨世界的因果效应(OCE),已知的因果结构和时间变化性的线性差异性变化性,具体效果的因个人而变化性变化性变化性与潜在变量(CWCFCE)的分布会持续减少,因为CWCEFCE结果的分布会持续减少,因为CFCEBLA是反复的模型,而不断减少。