There is an increasing interest in estimating heterogeneity in causal effects in randomized and observational studies. However, little research has been conducted to understand heterogeneity in an instrumental variables study. In this work, we present a method to estimate heterogeneous causal effects using an instrumental variable approach. The method has two parts. The first part uses subject-matter knowledge and interpretable machine learning techniques, such as classification and regression trees, to discover potential effect modifiers. The second part uses closed testing to test for the statistical significance of the effect modifiers while strongly controlling familywise error rate. We conducted this method on the Oregon Health Insurance Experiment, estimating the effect of Medicaid on the number of days an individual's health does not impede their usual activities, and found evidence of heterogeneity in older men who prefer English and don't self-identify as Asian and younger individuals who have at most a high school diploma or GED and prefer English.
翻译:在随机和观察研究中,人们越来越有兴趣估计因果关系的异质性,然而,在一项工具变量研究中,没有进行多少研究来理解异质性;在这项工作中,我们提出了一个方法,用一种工具变量方法来估计各种因果效应。该方法分为两部分:第一部分使用主题事项知识和可解释的机器学习技术,如分类和回归树,以发现潜在的效果改变剂;第二部分使用闭门测试来测试效果改变剂的统计意义,同时大力控制家庭错失率;我们在俄勒冈健康保险实验中进行了这种方法,估计了医疗补助对个人健康的影响,但不会妨碍其正常活动的天数,并发现了老年男子的异性证据,他们更喜欢英语,不会自我认同为亚洲人和年轻人,他们最多具有高中文凭或GED,更喜欢英语。