Doubly robust (DR) estimation is a crucial technique in causal inference and missing data problems. We propose a novel Propensity score Augmentved Doubly robust (PAD) estimator to enhance the commonly used DR estimator for average treatment effect on the treated (ATT), or equivalently, the mean of the outcome under covariate shift. Our proposed estimator attains a lower asymptotic variance than the conventional DR estimator when the propensity score (PS) model is misspecified and the outcome regression (OR) model is correct while maintaining the double robustness property that it is valid when either the PS or OR model is correct. These are realized by introducing some properly calibrated adjustment covariates to linearly augment the PS model and solving a restricted weighted least square (RWLS) problem to minimize the variance of the augmented estimator. Both the asymptotic analysis and simulation studies demonstrate that PAD can significantly reduce the estimation variance compared to the standard DR estimator when the PS model is wrong and the OR is correct, and maintain close performance to DR when the PS model is correct. We further applied our method to study the effects of eligibility for 401(k) plan on the improvement of net total financial assets using data from the Survey of Income and Program Participation of 1991.
翻译:在因果推断和缺失数据问题方面,我们建议了一种至关重要的稳健度估算方法。我们建议了一种新颖的Propentity 评分增强度增强度增强度强(PAD) 估计器,以加强对治疗(ATT)平均治疗效果通常使用的DR估计值(PAD),或相等于同量变换下结果的平均值。我们提议的估测器与常规的DR估测器相比,在偏差模型被错误描述,结果回归(OR)模型正确,同时保持在PS或OR模型正确时有效的双重稳健性属性。通过引入一些经过适当校准的调整的调差来提高对治疗(ATT)的平均治疗效果,或解决一个有限的加权最小平方(RWLS)问题,以尽量减少增加的估测器差异。在PS模型错误时,PADA模型和OR模型正确时,与标准DRA的估测值值值值值值值值值值值值值值相当,同时,在PS总改进后,1 继续使用我们的PS 改进方案的绩效。