This paper considers the problem of inference in cluster randomized trials where treatment status is determined according to a "matched pairs'' design. Here, by a cluster randomized experiment, we mean one in which treatment is assigned at the level of the cluster; by a "matched pairs'' design we mean that a sample of clusters is paired according to baseline, cluster-level covariates and, within each pair, one cluster is selected at random for treatment. We study the large sample behavior of a weighted difference-in-means estimator and derive two distinct sets of results depending on if the matching procedure does or does not match on cluster size. We then propose a variance estimator which is consistent in either case. Combining these results establishes the asymptotic exactness of tests based on these estimators. Next, we consider the properties of two common testing procedures based on $t$-tests constructed from linear regressions, and argue that both are generally conservative in our framework. Finally, we study the behavior of a randomization test which permutes the treatment status for clusters within pairs, and establish its finite sample and asymptotic validity for testing specific null hypotheses. A simulation study confirms the practical relevance of our theoretical results.
翻译:匹配设计下的集群随机试验推断
翻译后的摘要:
本文考虑在匹配设计下进行集群随机试验的推断问题。通过“集群随机试验”,我们是指在集群层面分配处理的试验;通过“匹配设计”,我们是指根据基线集群水平协变量对样本集群进行配对,然后在每对中随机选择一个集群进行处理。我们研究了一种加权平均值差异估计器的大样本行为,并根据配对程序是否匹配集群大小,得出了两组不同的结果。然后,我们提出了一种方差估计器,无论是哪种情况,在这种情况下是一致的。结合这些结果,确定了基于这些估计器的检验的渐近精确性。接下来,我们考虑了基于线性回归构造的t检验的两种常见测试程序的性质,并认为在我们的框架下两者通常是保守的。最后,我们研究了一种随机化测试的行为,该测试对每对集群的处理状态进行置换,并确定了它对特定零假设的测试的有限样本和渐近有效性。仿真研究证实了我们理论结果的实际相关性。