动态治疗对持续结果影响的工具变量估计

Jad Beyhum, S. Centorrino, J. Florens, I. Van Keilegom
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引用次数: 1

摘要

本文考虑识别和估计受试者接受治疗前时间Z对生存结果T的因果效应。治疗不是随机分配的,T由随机变量C随机右截,治疗Z的时间由min(T,C)右截。内生性问题是用一个工具变量解释Z和独立于模型的误差项来处理的。我们在完全非参数框架下研究辨识。我们证明,我们的规范产生一个积分方程,其中感兴趣的回归函数是一个解。我们提供了依赖于这个识别方程的识别条件。为了估计的目的,我们假设回归函数遵循参数模型。我们提出了一个估计过程,并给出了估计量渐近正态的条件。该估计器在仿真中表现出良好的有限样本特性。我们的方法是用来寻找证据,支持治疗倦怠的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Instrumental variable estimation of dynamic treatment effects on a duration outcome
This paper considers identification and estimation of the causal effect of the time Z until a subject is treated on a survival outcome T. The treatment is not randomly assigned, T is randomly right censored by a random variable C and the time to treatment Z is right censored by min(T,C). The endogeneity issue is treated using an instrumental variable explaining Z and independent of the error term of the model. We study identification in a fully nonparametric framework. We show that our specification generates an integral equation, of which the regression function of interest is a solution. We provide identification conditions that rely on this identification equation. For estimation purposes, we assume that the regression function follows a parametric model. We propose an estimation procedure and give conditions under which the estimator is asymptotically normal. The estimators exhibit good finite sample properties in simulations. Our methodology is applied to find evidence supporting the efficacy of a therapy for burn-out.
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