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Optimizing matching and analysis combinations for estimating causal effects

机译:优化匹配和分析组合以估计因果关系

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摘要

Matching methods are common in studies across many disciplines. However, there is limited evidence on how to optimally combine matching with subsequent analysis approaches to minimize bias and maximize efficiency for the quantity of interest. We conducted simulations to compare the performance of a wide variety of matching methods and analysis approaches in terms of bias, variance, and mean squared error (MSE). We then compared these approaches in an applied example of an employment training program. The results indicate that combining full matching with double robust analysis performed best in both the simulations and the applied example, particularly when combined with machine learning estimation methods. To reduce bias, current guidelines advise researchers to select the technique with the best post-matching covariate balance, but this work finds that such an approach does not always minimize mean squared error (MSE). These findings have important implications for future research utilizing matching. To minimize MSE, investigators should consider additional diagnostics, and use of simulations tailored to the study of interest to identify the optimal matching and analysis combination.
机译:匹配方法在许多学科的研究中很常见。但是,关于如何将匹配与随后的分析方法最佳地结合以最大程度地减少偏差和最大程度提高感兴趣量的效率的证据有限。我们进行了仿真,以比较各种匹配方法和分析方法在偏差,方差和均方误差(MSE)方面的性能。然后,我们在一个就业培训计划的应用示例中比较了这些方法。结果表明,在模拟和应用示例中,完全匹配与双重鲁棒分析的结合效果最好,特别是与机器学习估计方法结合时。为了减少偏差,当前的指南建议研究人员选择具有最佳匹配后协变量平衡的技术,但是这项工作发现,这种方法并不能始终将均方误差(MSE)降至最低。这些发现对利用匹配的未来研究具有重要意义。为了最大程度地减少MSE,研究人员应考虑进行其他诊断,并使用针对感兴趣的研究量身定制的模拟来确定最佳匹配和分析组合。

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