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Assessing bias in the estimation of causal effects : Rosenbaum bounds on matching estimators and instrumental variables estimation with imperfect instruments

机译:在因果效应估计中评估偏差:匹配估计量的Rosenbaum边界和不完善工具的工具变量估计

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摘要

"Propensity score matching provides an estimate of the effect of a 'treatment' variable on an outcome variable that is largely free of bias arising from an association between treatment status and observable variables. However, matching methods are not robust against 'hidden bias' arising from unobserved variables that simultaneously affect assignment to treatment and the outcome variable. One strategy for addressing this problem is the Rosenbaum bounds approach, which allows the analyst to determine how strongly an unmeasured confounding variable must affect selection into treatment in order to undermine the conclusions about causal effects from a matching analysis. Instrumental variables (IV) estimation provides an alternative strategy for the estimation of causal effects, but the method typically reduces the precision of the estimate and has an additional source of uncertainty that derives from the untestable nature of the assumptions of the IV approach. A method of assessing this additional uncertainty is proposed so that the total uncertainty of the IV approach can be compared with the Rosenbaum bounds approach to uncertainty using matching methods. Because the approaches rely on different information and different assumptions, they provide complementary information about causal relationships. The approach is illustrated via an analysis of the impact of unemployment insurance on the timing of reemployment, the postunemployment wage, and the probability of relocation, using data from several panels of the Survey of Income and Program Participation (SIPP)." (author's abstract)
机译:“倾向得分匹配提供了“治疗”变量对结果变量的影响的估计值,该结果变量在很大程度上没有因治疗状态和可观察变量之间的关联而产生的偏差。但是,匹配方法对于“隐性偏差”的产生不具有鲁棒性解决这一问题的一种策略是Rosenbaum边界方法,该方法使分析人员能够确定不可测量的混杂变量必须如何强烈影响选择治疗,从而破坏关于治疗的结论。匹配分析的因果效应工具变量(IV)估计为因果效应的估计提供了另一种策略,但是该方法通常会降低估计的精度,并且会带来其他不确定性源,这些不确定性源于假设的不可测性IV方法的评估方法提出了传统的不确定性,以便可以使用匹配方法将IV方法的总不确定性与Rosenbaum边界方法的不确定性进行比较。因为这些方法依赖于不同的信息和不同的假设,所以它们提供了因果关系的补充信息。通过使用收入和计划参与调查(SIPP)的几个小组的数据,分析失业保险对再就业时间,失业后工资和重新安置的可能性的影响,说明了这种方法。”(作者的摘要)

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