首页> 外文期刊>Review of Economics and Statistics >GENETIC MATCHING FOR ESTIMATING CAUSAL EFFECTS: A GENERAL MULTIVARIATE MATCHING METHOD FOR ACHIEVING BALANCE IN OBSERVATIONAL STUDIES
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GENETIC MATCHING FOR ESTIMATING CAUSAL EFFECTS: A GENERAL MULTIVARIATE MATCHING METHOD FOR ACHIEVING BALANCE IN OBSERVATIONAL STUDIES

机译:遗传匹配估算因果效应:观测研究中实现平衡的通用多元匹配方法

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摘要

This paper presents genetic matching, a method of multivariate matching that uses an evolutionary search algorithm to determine the weight each covariate is given. Both propensity score matching and matching based on Mahalanobis distance are limiting cases of this method. The algorithm makes transparent certain issues that all matching methods must confront. We present simulation studies that show that the algorithm improves covariate balance and that it may reduce bias if the selection on observables assumption holds. We then present a reanalysis of a number of data sets in the LaLonde (1986) controversy.
机译:本文介绍了遗传匹配,这是一种使用进化搜索算法确定每个协变量权重的多元匹配方法。倾向得分匹配和基于马氏距离的匹配都是该方法的局限情况。该算法使所有匹配方法必须面对的某些问题透明化。我们目前的仿真研究表明,该算法可以改善协变量平衡,并且如果在可观察性假设上进行选择,则可以减少偏差。然后,我们对LaLonde(1986)争议中的许多数据集进行了重新分析。

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