Functional data often arise in the areas where the causal treatment effect is of interest. However, research concerning the effect of a functional variable on an outcome is typically restricted to exploring the association rather than the casual relationship. The generalized propensity score, often used to calibrate the selection bias, is not directly applicable to a functional treatment variable due to a lack of definition of probability density function for functional data. Based on the functional linear model for the average dose-response functional, we propose three estimators, namely, the functional stabilized weight estimator, the outcome regression estimator and the doubly robust estimator, each of which has its own merits. We study their theoretical properties, which are corroborated through extensive numerical experiments. A real data application on electroencephalography data and disease severity demonstrates the practical value of our methods.
翻译:功能性数据往往出现在有因果关系的处理效果值得注意的领域;然而,关于功能性变量对结果的影响的研究一般限于探索关联关系,而不是偶然关系; 通常用于校准选择偏差的普遍倾向性评分,由于缺乏功能性数据的概率密度功能定义,不能直接适用于功能性治疗变量; 根据平均剂量反应功能的功能线性模型,我们建议三个估计者,即功能稳定重量估量器、结果回归估计器和双倍强大的估测器,每个都有自己的优点; 我们研究它们的理论特性,通过广泛的数字实验加以证实; 电脑摄影数据和疾病严重程度的实际数据应用显示了我们方法的实际价值。