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Interval Estimation of Individual-Level Causal Effects Under Unobserved Confounding

机译:不可观察混杂影响下个体水平因果效应的区间估计

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We study the problem of learning conditional average treatment effects (CATE) from observational data with unobserved confounders. The CATE function maps baseline covariates to individual causal effect predictions and is key for personalized assessments. Recent work has focused on how to learn CATE under unconfoundedness, i.e., when there are no unobserved confounders. Since CATE may not be identified when unconfoundedness is violated, we develop a functional interval estimator that predicts bounds on the individual causal effects under realistic violations of unconfoundedness. Our estimator takes the form of a weighted kernel estimator with weights that vary adversarially. We prove that our estimator is sharp in that it converges exactly to the tightest bounds possible on CATE when there may be unobserved confounders. Further, we study personalized decision rules derived from our estimator and prove that they achieve optimal minimax regret asymptotically. We assess our approach in a simulation study as well as demonstrate its application in the case of hormone replacement therapy by comparing conclusions from a real observational study and clinical trial.
机译:我们研究从观察数据与未观察到的混杂因素中学习条件平均治疗效果(CATE)的问题。 CATE函数将基线协变量映射到各个因果效应预测,并且是个性化评估的关键。最近的工作集中在如何在没有混杂的情况下学习CATE,即在没有不可观察的混杂因素的情况下。由于在违反无混淆的情况下可能无法识别CATE,因此我们开发了一种功能区间估计器,该功能间隔预测器可以在实际无混淆的情况下预测各个因果效应的界限。我们的估算器采用加权核估算器的形式,其权重在对抗性上有所不同。我们证明了我们的估计器之所以敏锐,是因为当可能存在无法观察的混杂因素时,它可以精确地收敛到CATE上的最严格边界。此外,我们研究了从我们的估计器得出的个性化决策规则,并证明它们渐近地达到了最优极小极大后悔。我们评估了我们在模拟研究中的方法,并通过比较实际观察性研究和临床试验的结论来证明其在激素替代疗法中的应用。

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