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Nonparametric Causal Effects Based on Incremental Propensity Score Interventions

机译:基于增量倾向得分干预的非参数因果效应

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Most work in causal inference considers deterministic interventions that set each unit's treatment to some fixed value. However, under positivity violations these interventions can lead to nonidentification, inefficiency, and effects with little practical relevance. Further, corresponding effects in longitudinal studies are highly sensitive to the curse of dimensionality, resulting in widespread use of unrealistic parametric models. We propose a novel solution to these problems: incremental interventions that shift propensity score values rather than set treatments to fixed values. Incremental interventions have several crucial advantages. First, they avoid positivity assumptions entirely. Second, they require no parametric assumptions and yet still admit a simple characterization of longitudinal effects, independent of the number of timepoints. For example, they allow longitudinal effects to be visualized with a single curve instead of lists of coefficients. After characterizing incremental interventions and giving identifying conditions for corresponding effects, we also develop general efficiency theory, propose efficient nonparametric estimators that can attain fast convergence rates even when incorporating flexible machine learning, and propose a bootstrap-based confidence band and simultaneous test of no treatment effect. Finally, we explore finite-sample performance via simulation, and apply the methods to study time-varying sociological effects of incarceration on entry into marriage. Supplementary materials for this article are available online.
机译:因果推理的大多数工作都考虑将每个单元的处理方式设置为某个固定值的确定性干预。但是,在违反积极性的情况下,这些干预措施可能导致身份不明确,效率低下,并且产生的影响与实际无关。此外,纵向研究中的相应效果对维数的诅咒高度敏感,导致广泛使用不切实际的参数模型。我们为这些问题提出了一种新颖的解决方案:增量干预措施,可以改变倾向得分值,而不是将治疗设置为固定值。增量干预具有几个关键优势。首先,他们完全避免了积极性假设。其次,它们不需要参数假设,但仍然允许纵向效应的简单表征,而与时间点的数量无关。例如,它们允许使用单个曲线而不是系数列表来显示纵向效果。在描述了增量干预的特征并确定了相应效果的条件之后,我们还开发了通用效率理论,提出了有效的非参数估计量,即使结合了灵活的机器学习方法也可以达到快速收敛,并提出了基于引导的置信带和无治疗的同时测试影响。最后,我们通过模拟探索有限样本的性能,并将这些方法应用于研究监禁对结婚的时变社会学影响。可在线获得本文的补充材料。

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