We propose novel estimators for categorical and continuous treatments by using an optimal covariate balancing strategy for inverse probability weighting. The resulting estimators are shown to be consistent and asymptotically normal for causal contrasts of interest, either when the model explaining treatment assignment is correctly specified, or when the correct set of bases for the outcome models has been chosen and the assignment model is sufficiently rich. For the categorical treatment case, we show that the estimator attains the semiparametric efficiency bound when all models are correctly specified. For the continuous case, the causal parameter of interest is a function of the treatment dose. The latter is not parametrized and the estimators proposed are shown to have bias and variance of the classical nonparametric rate. Asymptotic results are complemented with simulations illustrating the finite sample properties. Our analysis of a data set suggests a nonlinear effect of BMI on the decline in self reported health.
翻译:我们建议采用最佳的共变平衡策略,对概率加权进行反比重,从而对绝对和连续处理提出新的估计值。结果的估计值在因果对比中是一致和无症状的。结果估计值显示,当解释治疗分配的模型得到正确指定时,或者当结果模型的正确基准组已经选定,而且分配模式足够丰富时,结果估计值为绝对和连续处理。对于绝对处理案例,我们显示,当所有模型都得到正确指定时,估计值达到半对称效率的约束。对于持续的情况,利益因果参数是治疗剂量的函数。后者不是对称值,而拟议的估计值则显示经典非对称率的偏差和差异。对结果进行补充,用模拟来说明有限的抽样特性。我们对数据集的分析表明,BMI对自报健康状况下降具有非线效应。