Calibration weighting has been widely used to correct selection biases in non-probability sampling, missing data, and causal inference. The main idea is to calibrate the biased sample to the benchmark by adjusting the subject weights. However, hard calibration can produce enormous weights when an exact calibration is enforced on a large set of extraneous covariates. This article proposes a soft calibration scheme, in which the outcome and the selection indicator follow mixed-effects models. The scheme imposes an exact calibration on the fixed effects and an approximate calibration on the random effects. On the one hand, our soft calibration has an intrinsic connection with best linear unbiased prediction, which results in a more efficient estimation compared to hard calibration. On the other hand, soft calibration weighting estimation can be envisioned as penalized propensity score weight estimation, with the penalty term motivated by the mixed-effects structure. The asymptotic distribution and a valid variance estimator are derived for soft calibration. We demonstrate the superiority of the proposed estimator over other competitors in simulation studies and a real-data application.
翻译:校准加权法被广泛用于纠正非概率抽样、缺失的数据和因果推断中的选择偏差。主要想法是通过调整对象重量,将偏差抽样与基准进行校准。然而,当对大量外相共变体执行精确校准时,硬校准可产生巨大的加权数。本条建议采用软校准办法,使结果和选择指标采用混合效果模型。这个办法对固定效果进行了精确校准,对随机效果作了大致校准。一方面,软校准与最佳线性不偏倚预测有内在联系,结果与硬校准相比,得出更有效率的估计。另一方面,软校准加权估计可被设想为受惩罚的偏重估计,由混合效应结构驱动的罚款术语。为软校准提供了无症状分布和有效差异估测仪。我们在模拟研究和真实数据应用中,我们展示了拟议的估测员优于其他竞争者。