首页> 外文期刊>Quantitative Economics >Inference under covariate‐adaptive randomization with multiple treatments
【24h】

Inference under covariate‐adaptive randomization with multiple treatments

机译:协变量自适应随机与多种处理下的推论

获取原文
           

摘要

This paper studies inference in randomized controlled trials with covariate‐adaptive randomization when there are multiple treatments. More specifically, we study in this setting inference about the average effect of one or more treatments relative to other treatments or a control. As in Bugni, Canay, and Shaikh (2018), covariate‐adaptive randomization refers to randomization schemes that first stratify according to baseline covariates and then assign treatment status so as to achieve “balance” within each stratum. Importantly, in contrast to Bugni, Canay, and Shaikh (2018), we not only allow for multiple treatments, but further allow for the proportion of units being assigned to each of the treatments to vary across strata. We first study the properties of estimators derived from a “fully saturated” linear regression, that is, a linear regression of the outcome on all interactions between indicators for each of the treatments and indicators for each of the strata. We show that tests based on these estimators using the usual heteroskedasticity‐consistent estimator of the asymptotic variance are invalid in the sense that they may have limiting rejection probability under the null hypothesis strictly greater than the nominal level; on the other hand, tests based on these estimators and suitable estimators of the asymptotic variance that we provide are exact in the sense that they have limiting rejection probability under the null hypothesis equal to the nominal level. For the special case in which the target proportion of units being assigned to each of the treatments does not vary across strata, we additionally consider tests based on estimators derived from a linear regression with “strata fixed effects,” that is, a linear regression of the outcome on indicators for each of the treatments and indicators for each of the strata. We show that tests based on these estimators using the usual heteroskedasticity‐consistent estimator of the asymptotic variance are conservative in the sense that they have limiting rejection probability under the null hypothesis no greater than and typically strictly less than the nominal level, but tests based on these estimators and suitable estimators of the asymptotic variance that we provide are exact, thereby generalizing results in Bugni, Canay, and Shaikh (2018) for the case of a single treatment to multiple treatments. A simulation study and an empirical application illustrate the practical relevance of our theoretical results.
机译:本文研究了在有多种治疗方法的情况下采用协变量自适应随机分配的随机对照试验的推论。更具体地说,我们在这种情况下研究了一种或多种治疗相对于其他治疗或对照的平均效果的推论。就像在Bugni,Canay和Shaikh(2018)中一样,协变量自适应随机化是指首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。重要的是,与Bugni,Canay和Shaikh(2018)相比,我们不仅允许进行多种处理,而且还允许分配给每种处理的单位比例在各个层中有所不同。我们首先研究从“完全饱和”线性回归得出的估计量的属性,即线性回归是每种治疗指标与每个阶层指标之间所有相互作用的结果的线性回归。我们表明,基于这些估计量的检验使用渐近方差的通常异方差一致性估计量是无效的,因为它们可能在严格大于名义水平的零假设下具有有限的拒绝概率;另一方面,基于这些估计量和我们提供的渐近方差的适当估计量的检验是精确的,因为它们在等于名义水平的零假设下具有有限的拒绝概率。对于在每种情况下分配给每种治疗的目标单位比例没有变化的特殊情况,我们还考虑了基于估计量的检验,这些估计量来自具有“层固定效应”的线性回归,即线性回归。每个治疗指标的结果和每个阶层的指标。我们显示基于这些估计量的检验使用渐近方差的通常异方差一致性估计量是保守的,因为它们在零假设下的极限拒绝概率不大于且通常严格小于名义水平,但基于我们提供的这些估计量和渐近方差的适当估计量都是精确的,从而将Bugni,Canay和Shaikh(2018)中的结果推广到从单一治疗到多种治疗的情况。仿真研究和经验应用说明了我们理论结果的实际意义。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号