While most treatment evaluations focus on binary interventions, a growing literature also considers continuously distributed treatments, e.g. hours spent in a training program to assess its effect on labor market outcomes. In this paper, we propose a Cram\'er-von Mises-type test for testing whether the mean potential outcome given a specific treatment has a weakly monotonic relationship with the treatment dose under a weak unconfoundedness assumption. This appears interesting for testing shape restrictions, e.g. whether increasing the treatment dose always has a non-negative effect, no matter what the baseline level of treatment is. We formally show that the proposed test controls asymptotic size and is consistent against any fixed alternative. These theoretical findings are supported by the method's finite sample behavior in our Monte-Carlo simulations. As an empirical illustration, we apply our test to the Job Corps study and reject a weakly monotonic relationship between the treatment (hours in academic and vocational training) and labor market outcomes like earnings or employment.
翻译:虽然大多数治疗评价都以二元干预为重点,但越来越多的文献也考虑到持续分布的治疗方法,例如,在评估其对劳动力市场结果的影响的培训方案中花费的小时数。在本文中,我们提议进行Cram\'er-von Mises 型测试,以测试特定治疗的中潜在结果是否与治疗剂量在薄弱的无根据假设下存在微弱的单一关系。这似乎对测试形状限制很有意义,例如,增加治疗剂量是否总是具有非负效应,不管治疗的基准水平是什么。我们正式表明,拟议的测试控制是无药可治的,并且与任何固定的替代方法一致。这些理论结论得到蒙特卡洛模拟中该方法的有限抽样行为的支持。作为经验性例证,我们把我们的测试应用到工作团的研究中去,并拒绝治疗(在学术和职业培训中的小时)与收入或就业等劳动力市场结果之间薄弱的单一关系。