Consider estimation of average treatment effects with multi-valued treatments using augmented inverse probability weighted (IPW) estimators, depending on outcome regression and propensity score models in high-dimensional settings. These regression models are often fitted by regularized likelihood-based estimation, while ignoring how the fitted functions are used in the subsequent inference about the treatment parameters. Such separate estimation can be associated with known difficulties in existing methods. We develop regularized calibrated estimation for fitting propensity score and outcome regression models, where sparsity-including penalties are employed to facilitate variable selection but the loss functions are carefully chosen such that valid confidence intervals can be obtained under possible model misspecification. Unlike in the case of binary treatments, the usual augmented IPW estimator is generalized by allowing different copies of coefficient estimators in outcome regression to ensure just-identification. For propensity score estimation, the new loss function and estimating functions are directly tied to achieving covariate balance between weighted treatment groups. We develop practical numerical algorithms for computing the regularized calibrated estimators with group Lasso by innovatively exploiting Fisher scoring, and provide rigorous high-dimensional analysis for the resulting augmented IPW estimators under suitable sparsity conditions, while tackling technical issues absent or overlooked in previous analyses. We present simulation studies and an empirical application to estimate the effects of maternal smoking on birth weights. The proposed methods are implemented in the R package mRCAL.
翻译:在高维环境下,根据结果回归和偏差分分分数模型,根据结果回归和偏差度分数模型,考虑利用高维环境中的反差加权偏差(IPW)估计器对平均治疗效果进行估算。这些回归模型往往适合定期的可能性估计,而忽略了随后对治疗参数的推断中如何使用相应功能。这种单独估计可能与现有方法中已知的困难相关联。我们为适当的适应性偏差分和结果回归模型制定了标准化调整估计,采用调和惩罚(包括惩罚)等办法来便利变量选择,但损失功能经过仔细选择,从而可以在可能的模型误差下获得有效的信任间隔。与二元治疗不同的是,通常增加的IPW估计仪是普遍的,允许结果回归时使用不同的系数估计器副本,以确保公正的识别。关于偏差率估计,新的损失功能和估计功能与在加权治疗组之间实现调和平衡直接挂钩。我们开发了实际的数字算法,用于通过创新的利用节能评分计算与集团的校正校正校正校准校准校准校准校准的校准度,同时进行当前的IP评级分析,并改进了当前测测测测测测测测重的校准方法,同时进行目前的测测测测测测测测测测测测测测测测测测测测测测测测。