Causal inference for extreme events has many potential applications in fields such as climate science, medicine and economics. We study the extremal quantile treatment effect of a binary treatment on a continuous, heavy-tailed outcome. Existing methods are limited to the case where the quantile of interest is within the range of the observations. For applications in risk assessment, however, the most relevant cases relate to extremal quantiles that go beyond the data range. We introduce an estimator of the extremal quantile treatment effect that relies on asymptotic tail approximation, and use a new causal Hill estimator for the extreme value indices of potential outcome distributions. We establish asymptotic normality of the estimators and propose a consistent variance estimator to achieve valid statistical inference. We illustrate the performance of our method in simulation studies, and apply it to a real data set to estimate the extremal quantile treatment effect of college education on wage.
翻译:极端事件的因果推断在气候科学、医学和经济学等领域有许多潜在用途。我们研究二元治疗对连续、重尾结果的极端微量处理效应。现有方法仅限于在观察范围以内关注量的个案。然而,风险评估的应用方面,最相关的案例涉及超出数据范围范围的极端微量处理效应。我们引入了依赖无药性尾巴近似的极端微量处理效应估计器,并使用新的因果山丘估计器来计算潜在结果分布的极端价值指数。我们建立了估计值的无症状常态,并提出一致的差异估计器,以得出有效的统计推理。我们用模拟研究方法的性能,并将其应用于一套真实的数据中,用以估计大学教育对工资的极端微量处理效应。