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首页> 外文期刊>American Journal of Epidemiology >Improving Propensity Score Estimators' Robustness to Model Misspecification Using Super Learner
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Improving Propensity Score Estimators' Robustness to Model Misspecification Using Super Learner

机译:使用Super Learner改进倾向得分估算器对模型错误指定的鲁棒性

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摘要

The consistency of propensity score (PS) estimators relies on correct specification of the PS model. The PS is frequently estimated using main-effects logistic regression. However, the underlying model assumptions may not hold. Machine learning methods provide an alternative nonparametric approach to PS estimation. In this simulation study, we evaluated the benefit of using Super Learner (SL) for PS estimation. We created 1,000 simulated data sets (n = 500) under 4 different scenarios characterized by various degrees of deviance from the usual main-term logistic regression model for the true PS. We estimated the average treatment effect using PS matching and inverse probability of treatment weighting. The estimators' performance was evaluated in terms of PS prediction accuracy, covariate balance achieved, bias, standard error, coverage, and mean squared error. All methods exhibited adequate overall balancing properties, but in the case of model misspecification, SL performed better for highly unbalanced variables. The SL-based estimators were associated with the smallest bias in cases of severe model misspecification. Our results suggest that use of SL to estimate the PS can improve covariate balance and reduce bias in a meaningful manner in cases of serious model misspecification for treatment assignment.
机译:倾向评分(PS)估计量的一致性取决于PS模型的正确规范。通常使用主效应逻辑回归来估计PS。但是,基本模型假设可能不成立。机器学习方法为PS估计提供了另一种非参数方法。在此仿真研究中,我们评估了使用Super Learner(SL)进行PS估计的好处。我们在4种不同情况下创建了1,000个模拟数据集(n = 500),其特征与真实PS的通常主要逻辑对数回归模型存在不同程度的偏差。我们使用PS匹配和治疗权重的倒数来估计平均治疗效果。根据PS预测的准确性,获得的协变量平衡,偏差,标准误差,覆盖率和均方误差来评估估计器的性能。所有方法都表现出足够的总体平衡特性,但是在模型规格不正确的情况下,SL对于高度不平衡的变量表现更好。在严重模型错误指定的情况下,基于SL的估计量与最小偏差相关。我们的结果表明,使用SL估计PS可以在有意义的模型分配错误严重的情况下以有意义的方式改善协变量平衡并减少偏差。

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