In this paper, we focus on estimating the average treatment effect (ATE) of a target population when individual-level data from a source population and summary-level data (e.g., first or second moments of certain covariates) from the target population are available. In the presence of heterogeneous treatment effect, the ATE of the target population can be different from that of the source population when distributions of treatment effect modifiers are dissimilar in these two populations, a phenomenon also known as covariate shift. Many methods have been developed to adjust for covariate shift, but most require individual covariates from a representative target sample. We develop a weighting approach based on summary-level information from the target sample to adjust for possible covariate shift in effect modifiers. In particular, weights of the treated and control groups within a source sample are calibrated by the summary-level information of the target sample. Our approach also seeks additional covariate balance between the treated and control groups in the source sample. We study the asymptotic behavior of the corresponding weighted estimator for the target population ATE under a wide range of conditions. The theoretical implications are confirmed in simulation studies and a real data application.
翻译:在本文中,当有来自源人口的个人数据和来自目标人口的简要数据(例如,某些共变数的第一或第二时刻)时,我们侧重于估计目标人口的平均治疗效果(ATE),在有不同治疗效果的情况下,当治疗效果改变者在这两种人口中分布不同时,目标人口的总处理效果可能不同于源人口,这又称为共变式变化现象。已经制定了许多方法来适应共变变化,但多数情况下需要来自具有代表性的目标样本的个别共变数。我们根据目标样本的简要信息制定了一种加权方法,以适应可能的共变变化改变因素。特别是,一个源抽样中被处理和控制群体的权重根据目标样本的简要水平信息加以校准。我们的方法还寻求在源抽样中被处理和控制的群体之间增加共变平衡。我们研究了在广泛条件下对目标人口总变数进行的相应加权估测算师的无常态行为。理论影响在模拟研究和实际数据应用中得到了确认。