In some inferential statistical methods, such as tests and confidence intervals, it is important to describe the stochastic behavior of statistical functionals, aside from their large sample properties. We study such behavior in terms of the usual stochastic order. For this purpose, we introduce a generalized family of stochastic orders, which is referred to as transform orders, showing that it provides a flexible framework for deriving stochastic monotonicity results. Given that our general definition makes it possible to obtain some well-known ordering relations as particular cases, we can easily apply our method to different families of functionals. These include some prominent inequality measures, such as the generalized entropy, the Gini index, and its generalizations. We also illustrate the applicability of our approach by determining the least favorable distribution, and the behavior of some bootstrap statistics, in some goodness-of-fit testing procedures.
翻译:在诸如测试和信任间隔等一些推论统计方法中,必须说明统计功能的随机行为,除了它们的大样本特性之外,还必须说明统计功能的随机行为。我们用通常的随机顺序来研究这种行为。为此,我们引入了一个一般的随机命令体系,称为变压命令,表明它为得出随机单一性结果提供了一个灵活的框架。鉴于我们的一般定义使得有可能获得某些众所周知的定序关系,作为特定案例,我们很容易地将我们的方法应用于功能的不同家庭。其中包括一些显著的不平等措施,如普遍酶、吉尼指数及其概括性。我们还通过确定最不受欢迎的分布以及某些靴式统计数据在一些良好测试程序中的可操作性来说明我们的方法的可适用性。