We develop new semiparametric methods for estimating treatment effects. We focus on a setting where the outcome distributions may be thick tailed, where treatment effects are small, where sample sizes are large and where assignment is completely random. This setting is of particular interest in recent experimentation in tech companies. We propose using parametric models for the treatment effects, as opposed to parametric models for the full outcome distributions. This leads to semiparametric models for the outcome distributions. We derive the semiparametric efficiency bound for this setting, and propose efficient estimators. In the case with a constant treatment effect one of the proposed estimators has an interesting interpretation as a weighted average of quantile treatment effects, with the weights proportional to (minus) the second derivative of the log of the density of the potential outcomes. Our analysis also results in an extension of Huber's model and trimmed mean to include asymmetry and a simplified condition on linear combinations of order statistics, which may be of independent interest.
翻译:我们开发了新的半参数方法来估计治疗效果。 我们关注的结果分布可能是厚的尾巴,处理效果小,样本大小大,分配完全随机的,这种设置对技术公司最近的实验特别感兴趣。 我们建议对治疗效果采用参数模型,而不是对结果分布全的参数模型。 这导致结果分布的半参数模型。 我们为这一设置提取半参数效率,并提出高效的估测器。 在持续处理效果的情况下,提议的估测器有一个有趣的解释,认为是定量处理效果的加权平均数,其重量与潜在结果密度的第二个衍生值成正比(减号)。我们的分析还导致Huber模型的扩展,并试图将不对称和简化的顺序统计线性组合条件纳入其中,这些可能具有独立的兴趣。