We propose a method for reporting how program evaluations reduce gaps between groups, such as the gender or Black-white gap. We first show that the reduction in disparities between groups can be written as the difference in conditional average treatment effects (CATE) for each group. Then, using a Kitagawa-Oaxaca-Blinder-style decomposition, we highlight how these CATE can be decomposed into unexplained differences in CATE in other observables versus differences in composition across other observables (e.g. the "endowment"). Finally, we apply this approach to study the impact of Medicare on American's access to health insurance.
翻译:我们建议了一种方法来报告方案评价如何缩小不同群体之间的差距,例如性别或黑白差距;我们首先表明,不同群体之间的差距的缩小可以写成每个群体在有条件平均治疗效果方面的差别。 然后,我们用北川-瓦哈卡-布朗德式的分解法,我们强调这些CATE可以如何分解成CATE在其他可见的CATE中无法解释的差别,而其他可见的(例如“支付”)。最后,我们运用这个方法来研究Medicare对美国获得医疗保险的影响。