基于数据融合的平均治疗效果的半参数仪器变量估计

Baoluo Sun, Wang Miao
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引用次数: 6

摘要

假设有人有兴趣借助有效的工具变量估计存在潜在的无法测量的混杂的因果效应。本文研究了当两个不同来源的数据融合在一起时对平均治疗效果进行推断的问题,其中一个包含治疗信息,另一个包含结果信息,而仪器和基线协变量向量的值都记录在两个来源中。我们提供了一组一般的充分条件,在这些条件下,即使数据来自两个异质群体,也可以从数据融合引起的观测数据规律中非参数地识别平均处理效果,并推导了估计该因果参数的效率界。对于推理,我们开发了参数和半参数方法,包括一个即使在观测数据模型的部分错误说明下也是一致的多重鲁棒和局部有效的估计器。我们通过模拟和公共住房项目的应用来说明这些方法。
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On Semiparametric Instrumental Variable Estimation of Average Treatment Effects through Data Fusion
Suppose one is interested in estimating causal effects in the presence of potentially unmeasured confounding with the aid of a valid instrumental variable. This paper investigates the problem of making inferences about the average treatment effect when data are fused from two separate sources, one of which contains information on the treatment and the other contains information on the outcome, while values for the instrument and a vector of baseline covariates are recorded in both. We provide a general set of sufficient conditions under which the average treatment effect is nonparametrically identified from the observed data law induced by data fusion, even when the data are from two heterogeneous populations, and derive the efficiency bound for estimating this causal parameter. For inference, we develop both parametric and semiparametric methods, including a multiply robust and locally efficient estimator that is consistent even under partial misspecification of the observed data model. We illustrate the methods through simulations and an application on public housing projects.
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