In this article, we aim to provide a general and complete understanding of semi-supervised (SS) causal inference for treatment effects. Specifically, we consider two such estimands: (a) the average treatment effect and (b) the quantile treatment effect, as prototype cases, in an SS setting, characterized by two available data sets: (i) a labeled data set of size $n$, providing observations for a response and a set of high dimensional covariates, as well as a binary treatment indicator; and (ii) an unlabeled data set of size $N$, much larger than $n$, but without the response observed. Using these two data sets, we develop a family of SS estimators which are ensured to be: (1) more robust and (2) more efficient than their supervised counterparts based on the labeled data set only. Beyond the 'standard' double robustness results (in terms of consistency) that can be achieved by supervised methods as well, we further establish root-n consistency and asymptotic normality of our SS estimators whenever the propensity score in the model is correctly specified, without requiring specific forms of the nuisance functions involved. Such an improvement of robustness arises from the use of the massive unlabeled data, so it is generally not attainable in a purely supervised setting. In addition, our estimators are shown to be semi-parametrically efficient as long as all the nuisance functions are correctly specified. Moreover, as an illustration of the nuisance estimators, we consider inverse-probability-weighting type kernel smoothing estimators involving unknown covariate transformation mechanisms, and establish in high dimensional scenarios novel results on their uniform convergence rates, which should be of independent interest. Numerical results on both simulated and real data validate the advantage of our methods over their supervised counterparts with respect to both robustness and efficiency.
翻译:在本篇文章中,我们的目标是对半监督性(SS)因果推断的处理效果提供总体和完整的理解。 具体地说, 我们考虑两个这样的估算值:(a) 平均处理效果和(b) 量化处理效应,在SS的设置中,以两个可用的数据集为特征,作为原型案例,在SS的设置中:(一) 标定的尺寸为美元数据集,为反应提供观察和一套高维共变异,以及二元处理指标;(二) 未标定的数值为美元,大大大于美元,但没有观察到的反应。我们考虑两个估算值的大小:(a) 平均处理效果和(b) 量化处理效应,在SS的原型中,作为原型的预估值排序,我们开发的定量评估结果比其仅基于标签数据集的监督对应方要强。除了“标准”的双维度结果(在一致性方面)外,我们还可以通过监督特定方法进一步建立本位一致性, 以及我们的SS估测值的正常度数据集, 当我们在模型中的正度评分值中进行准确的精确度评分值计算时,, 其精度的精度是精确的精确的计算结果, 需要显示的精度的精度的精度的精度的精度是精确的精度的精度的精度的精度的精度的精度的精度的精度的精度的精度的精度的精度的精度的精度的精度, 。