We provide novel bounds on average treatment effects (on the treated) that are valid under an unconfoundedness assumption. Our bounds are designed to be robust in challenging situations, for example, when the conditioning variables take on a large number of different values in the observed sample, or when the overlap condition is violated. This robustness is achieved by only using limited "pooling" of information across observations. Namely, the bounds are constructed as sample averages over functions of the observed outcomes such that the contribution of each outcome only depends on the treatment status of a limited number of observations. No information pooling across observations leads to so-called "Manski bounds", while unlimited information pooling leads to standard inverse propensity score weighting. We explore the intermediate range between these two extremes and provide corresponding inference methods. We show in Monte Carlo experiments and through an empirical application that our bounds are indeed robust and informative in practice.
翻译:我们提供了在无根据假设下有效的平均治疗效果(经处理的)的新界限。我们的界限设计在具有挑战性的情况下是稳健的,例如,当调节变量在观察到的样本中占据大量不同的数值时,或当重叠条件被违反时。这种稳健性仅通过使用有限的跨观测“汇总”信息来实现。也就是说,这些界限是作为相对于观测结果的功能的样本平均值构建的,这样,每个结果的贡献仅取决于数量有限的观测结果的处理状况。没有信息汇集在各种观测中导致所谓的“曼斯基界限 ”, 而无限制的信息汇集则导致标准的反偏向加权。我们探索这两个极端之间的中间范围,并提供相应的推理方法。我们在蒙特卡洛的实验中和通过经验应用显示,我们的界限在实践中确实是稳健和丰富的。