In clustered data setting, informative cluster size has been a focus of recent research. In the nonparametric context, the problem has been considered mainly for testing equality of distribution functions. The aim in this paper is to develop inferential procedure for the Wilcoxon-Mann-Whintey effect (also known as the nonprametric relative effect). Unbiased estimator is provided and its asymptotic properties are investigated. The asymptotic theory is employed to develop inferential methods. While the proposed method takes information in the cluster sizes into consideration when constructing the estimator, it is equally applicable for ignorable cluster size situation. Simulation results show that our method appropriately accounts for informative cluster size and it generally outperforms existing methods, especially those designed under ignorable cluster sizes. The applications of the method is illustrated using data from a longitudinal study of alcohol use and a periodontal study.
翻译:在集成数据设置中,信息型群的大小一直是最近研究的一个焦点,在非参数方面,问题主要被考虑用于测试分布功能的平等性,本文件的目的是为威尔科松-曼-文泰效应(又称非光学相对效应)制定推断程序,提供不偏向的估量器,并调查其无症状特性。无症状理论用于开发推断方法。在构建估测器时,拟议方法将群集大小中的信息考虑在内,但同样适用于可忽略的群集大小情况。模拟结果显示,我们在信息型群尺寸方面采用的方法适当核算,并普遍超过现有方法,特别是在可忽略的群集尺寸下设计的方法。该方法的应用使用长纵向酒精使用研究和周期研究的数据加以说明。