We discuss systematically two versions of confidence regions: those based on p-values and those based on e-values, a recent alternative to p-values. Both versions can be applied to multiple hypothesis testing, and in this paper we are interested in procedures that control the number of false discoveries under arbitrary dependence between the base p- or e-values. We introduce a procedure that is based on e-values and show that it is efficient both computationally and statistically using simulated and real-world datasets. Our comparison with the corresponding standard procedure based on p-values is somewhat informal, but the new one appears to perform significantly better.
翻译:我们系统地讨论信任区域的两个版本:基于p值的区域和基于电子值的区域,这是最近一种P值的替代物。两种版本都可以适用于多个假设测试,在本文件中,我们感兴趣的是控制基点p值或电子值之间在任意依赖下发现的假发现数量的程序。我们引入了一个基于电子值的程序,并表明使用模拟和真实世界数据集在计算和统计上都是有效的。我们与基于p值的相应标准程序的比较有些非正式,但新的程序似乎效果好得多。