This article introduces a leave-one-out regression adjustment estimator (LOORA) for estimating average treatment effects in randomized controlled trials. The method removes the finite-sample bias of conventional regression adjustment and provides exact variance expressions for LOORA versions of the Horvitz-Thompson and difference-in-means estimators under simple and complete random assignment. Ridge regularization limits the influence of high-leverage observations, improving stability and precision in small samples. In large samples, LOORA attains the asymptotic efficiency of regression-adjusted estimator as characterized by Lin (2013, Annals of Applied Statistics), while remaining exactly unbiased. To construct confidence intervals, we rely on asymptotic variance estimates that treat the estimator as a two-step procedure, accounting for both the regression adjustment and the random assignment stages. Two within-subject experimental applications that provide realistic joint distributions of potential outcomes as ground truth show that LOORA eliminates substantial biases and achieves close-to-nominal confidence interval coverage.
翻译:本文提出了一种留一回归调整估计量(LOORA),用于估计随机对照试验中的平均处理效应。该方法消除了传统回归调整的有限样本偏差,并在简单完全随机分配下,为Horvitz-Thompson估计量和均值差分估计量的LOORA版本提供了精确的方差表达式。岭正则化限制了高杠杆观测值的影响,提高了小样本下的稳定性和精确度。在大样本中,LOORA达到了Lin(2013,《应用统计学年鉴》)所描述的回归调整估计量的渐近效率,同时保持严格无偏。为构建置信区间,我们依赖于将估计量视为两阶段过程的渐近方差估计,同时考虑了回归调整和随机分配阶段。两项基于受试者内实验的应用提供了潜在结果的真实联合分布作为基准,结果表明LOORA消除了显著偏差,并实现了接近名义水平的置信区间覆盖。