论文标题
非参数因果介导分析,用于随机介入(IN)直接效应
Nonparametric causal mediation analysis for stochastic interventional (in)direct effects
论文作者
论文摘要
历史上,因果中介分析以两种重要方式受到限制:(i)传统上将重点放在二进制治疗和静态干预上,并且(ii)直接和间接效应分解仅在没有治疗影响的中间混杂因素的情况下才能识别出来。我们提出了一项关于人口干预效应的直接效应分解的理论研究,该效应由共同应用于治疗和介体的随机干预措施定义。与现有建议相反,无论治疗是绝对的还是连续的,也可以评估我们的因果效应,即使在受到治疗影响的中间混杂因素的存在下,也可以保持明确的定义。我们的(IN)直接效应是可识别的,没有对跨世界反事实独立性的限制性假设,从而可以在随机对照试验中验证从中得出的实质性结论。除了引入新的效果外,我们还仔细研究了与我们(IN)直接效应的柔性,多重稳健估计量相关的非参数效率理论,同时避免了通过假设滋扰参数函数的参数模型引起的不当限制。为了补充我们的非参数估计策略,我们介绍了用于构建置信区间和假设测试的推论技术,并讨论实施该方法的开源软件。
Causal mediation analysis has historically been limited in two important ways: (i) a focus has traditionally been placed on binary treatments and static interventions, and (ii) direct and indirect effect decompositions have been pursued that are only identifiable in the absence of intermediate confounders affected by treatment. We present a theoretical study of an (in)direct effect decomposition of the population intervention effect, defined by stochastic interventions jointly applied to the treatment and mediators. In contrast to existing proposals, our causal effects can be evaluated regardless of whether a treatment is categorical or continuous and remain well-defined even in the presence of intermediate confounders affected by treatment. Our (in)direct effects are identifiable without a restrictive assumption on cross-world counterfactual independencies, allowing for substantive conclusions drawn from them to be validated in randomized controlled trials. Beyond the novel effects introduced, we provide a careful study of nonparametric efficiency theory relevant for the construction of flexible, multiply robust estimators of our (in)direct effects, while avoiding undue restrictions induced by assuming parametric models of nuisance parameter functionals. To complement our nonparametric estimation strategy, we introduce inferential techniques for constructing confidence intervals and hypothesis tests, and discuss open source software implementing the proposed methodology.