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Quantile treatment effects and bootstrap inference under covariate-adaptive randomization

机译:在协变量 - 自适应随机化下定位处理效果和自举推论

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In this paper, we study the estimation and inference of the quantile treatment effect under covariate-adaptive randomization. We propose two estimation methods: (1) the simple quantile regression and (2) the inverse propensity score weighted quantile regression. For the two estimators, we derive their asymptotic distributions uniformly over a compact set of quantile indexes, and show that, when the treatment assignment rule does not achieve strong balance, the inverse propensity score weighted estimator has a smaller asymptotic variance than the simple quantile regression estimator. For the inference of method (1), we show that the Wald test using a weighted bootstrap standard error underrejects. But for method (2), its asymptotic size equals the nominal level. We also show that, for both methods, the asymptotic size of the Wald test using a covariate-adaptive bootstrap standard error equals the nominal level. We illustrate the finite sample performance of the new estimation and inference methods using both simulated and real datasets.
机译:本文研究了协活性随机化下量化处理效果的估计和推理。我们提出了两种估计方法:(1)简单的分体回归和(2)逆倾向分数加权量回归。对于这两个估计器,我们通过简单的平衡均匀的分位数指数均匀地均匀地均匀地逐渐逐渐达到渐近分布,并表明,当治疗分配规则没有达到强的平衡时,逆倾向得分加权估计器具有比简单的量子回归更小的渐近方差估计师。对于方法(1)的推断,我们表明WALD测试使用加权自动启动标准错误不符。但对于方法(2),其渐近尺寸等于标称水平。我们还表明,对于这两种方法,使用协变量 - 自适应引导标准误差的WALD测试的渐近大小等于标称级别。我们说明了使用模拟和实际数据集的新估计和推理方法的有限样本性能。

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