The problem of generalization and transportation of treatment effect estimates from a study sample to a target population is central to empirical research and statistical methodology. In both randomized experiments and observational studies, weighting methods are often used with this objective. Traditional methods construct the weights by separately modeling the treatment assignment and study selection probabilities and then multiplying functions (e.g., inverses) of their estimates. In this work, we provide a justification and an implementation for weighting in a single step. We show a formal connection between this one-step method and inverse probability and inverse odds weighting. We demonstrate that the resulting estimator for the target average treatment effect is consistent, asymptotically Normal, multiply robust, and semiparametrically efficient. We evaluate the performance of the one-step estimator in a simulation study. We illustrate its use in a case study on the effects of physician racial diversity on preventive healthcare utilization among Black men in California. We provide R code implementing the methodology.
翻译:在随机实验和观察研究中,加权方法往往用于这个目的。传统方法通过分别模拟治疗任务分配和研究选择概率的模型来构建加权,然后将其估计数的概率(例如反向)进行乘法计算。在这项工作中,我们为单步加权提供了理由和实施。我们显示了这一一步方法与反向概率和反向偏差加权之间的正式联系。我们证明,由此得出的平均治疗效果目标估计值是一致的,即平态的,倍增的,半对称的。我们在模拟研究中评估一阶点估计值的性能。我们在一项关于医生种族多样性对加利福尼亚黑人预防性保健利用的影响的案例研究中说明了其使用情况。我们提供了执行方法的R代码。