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Inference under Covariate-Adaptive Randomization

机译:协变量自适应随机推理

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摘要

This paper studies inference for the average treatment effect in randomized controlled trials with covariate-adaptive randomization. Here, by covariate-adaptive randomization, we mean randomization schemes that first stratify according to baseline covariates and then assign treatment status so as to achieve “balance” within each stratum. Our main requirement is that the randomization scheme assigns treatment status within each stratum so that the fraction of units being assigned to treatment within each stratum has a well behaved distribution centered around a proportion π as the sample size tends to infinity. Such schemes include, for example, Efron’s biased-coin design and stratified block randomization. When testing the null hypothesis that the average treatment effect equals a pre-specified value in such settings, we first show the usual two-sample t-test is conservative in the sense that it has limiting rejection probability under the null hypothesis no greater than and typically strictly less than the nominal level. We show, however, that a simple adjustment to the usual standard error of the two-sample t-test leads to a test that is exact in the sense that its limiting rejection probability under the null hypothesis equals the nominal level. Next, we consider the usual t-test (on the coefficient on treatment assignment) in a linear regression of outcomes on treatment assignment and indicators for each of the strata. We show that this test is exact for the important special case of randomization schemes withπ=12, but is otherwise conservative. We again provide a simple adjustment to the standard errors that yields an exact test more generally. Finally, we study the behavior of a modified version of a permutation test, which we refer to as the covariate-adaptive permutation test, that only permutes treatment status for units within the same stratum. When applied to the usual two-sample t-statistic, we show that this test is exact for randomization schemes with π=12and that additionally achieve what we refer to as “strong balance.” For randomization schemes with π12, this test may have limiting rejection probability under the null hypothesis strictly greater than the nominal level. When applied to a suitably adjusted version of the two-sample t-statistic, however, we show that this test is exact for all randomization schemes that achieve “strong balance,” including those withπ12. A simulation study confirms the practical relevance of our theoretical results. We conclude with recommendations for empirical practice and an empirical illustration·
机译:本文研究了协变量自适应随机对照试验中平均治疗效果的推论。在这里,通过协变量自适应随机化,我们指的是先根据基线协变量进行分层然后分配治疗状态以便在每个层次内实现“平衡”的随机方案。我们的主要要求是,随机化方案在每个层次内分配治疗状态,以便随着样本量趋于无穷大,分配给每个层次内治疗的单位比例具有良好的分布,其分布集中在比例π周围。此类方案包括,例如,埃夫隆(Efron)的有偏硬币设计和分层的区块随机化。在这种情况下测试平均治疗效果等于预设值的零假设时,我们首先表明通常的两样本t检验是保守的,因为在零假设下它具有限制性拒绝概率不大于和通常严格低于名义水平。但是,我们表明,对两个样本t检验的通常标准误差进行简单调整,就可以得出一种精确的检验,即在零假设下其极限剔除概率等于名义水平。接下来,我们考虑通常的t检验(关于治疗分配的系数),对每个分层的治疗分配和指标的结果进行线性回归。我们证明此测试对于具有 π = 1 2 ,但还是保守的。我们再次对标准误差进行了简单的调整,从而可以更广泛地进行精确的测试。最后,我们研究了置换测试的改进版本的行为,我们将其称为协变量自适应置换测试,该行为仅置换同一层内单位的治疗状态。当应用于通常的两样本t统计量时,我们证明此测试对于使用 π = 1 2 ,它还达到了我们所说的“强平衡”。对于具有 π 1 2 ,该测试可能具有限制性排斥零假设下的概率严格大于名义水平。但是,当将其应用于两样本t统计量的经过适当调整的版本时,我们表明该测试对于实现“强平衡”的所有随机方案都是准确的,包括使用 π 1 2 。仿真研究证实了我们理论结果的实际意义。我们以经验实践的建议和经验例证作为总结·

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