I introduce a simple permutation procedure to test conventional (non-sharp) hypotheses about the effect of a binary treatment in the presence of a finite number of large, heterogeneous clusters when the treatment effect is identified by comparisons across clusters. The procedure asymptotically controls size by applying a level-adjusted permutation test to a suitable statistic. The adjustments needed for most empirically relevant situations are tabulated in the paper. The adjusted permutation test is easy to implement in practice and performs well at conventional levels of significance with at least four treated clusters and a similar number of control clusters. It is particularly robust to situations where some clusters are much more variable than others. Examples and an empirical application are provided.
翻译:我引入了一个简单的变位程序,以测试常规(非整数)的假设,即当处理效应通过对各组作比较而确定不同处理效应时,在数量有限、数量众多、种类繁多的组群存在的情况下,对常规(非整数)处理假设的效果进行测试。程序通过对适当统计数据进行按级别调整的变位测试,对控制规模进行非现性调整。文件中列出了大多数经验相关情况所需的调整。经调整的变位测试在实际中易于实施,并在至少4个经过处理的组群和类似的控制组群的常规重要级别上运行良好。对于某些组群比其他组群变异性大得多的情况,该程序特别稳健。提供了实例和经验应用。