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Interpretable Almost-Matching-Exactly With Instrumental Variables

机译:可解释的几乎匹配 - 完全适用于乐器变量

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Uncertainty in the estimation of the causal effect in observational studies is often due to unmeasured confounding, i.e., the presence of unobserved covariates linking treatments and outcomes. Instrumental Variables (IV) are commonly used to reduce the effects of unmeasured confounding. Existing methods for IV estimation either require strong parametric assumptions, use arbitrary distance metrics, or do not scale well to large datasets. We propose a matching framework for IV in the presence of observed categorical confounders that addresses these weaknesses. Our method first matches units exactly, and then consecutively drops variables to approximately match the remaining units on as many variables as possible. We show that our algorithm constructs better matches than other existing methods on simulated datasets, and we produce interesting results in an application to political canvassing.
机译:在观察性研究中估算因果效应的不确定性通常是由于未测量的混淆,即,未观察到的协变性与治疗和结果的存在。乐器变量(iv)通常用于减少未测量混淆的影响。对于IV估计的现有方法需要强大的参数假设,使用任意距离度量,或者对大型数据集不展出。我们在满足这些弱点的观察到分类混淆存在下提出了IV的匹配框架。我们的方法首先匹配单位,然后连续下降变量,以尽可能多地匹配剩余的单位。我们表明,我们的算法构造了比模拟数据集上的其他现有方法更好的匹配,并且我们在对政治帆布的应用中产生有趣的结果。

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