Extending to dimension 2 and higher the dual univariate concepts of ranks and quantiles has remained an open problem for more than half a century. Based on measure transportation results, a solution has been proposed recently under the name center-outward ranks and quantiles which, contrary to previous proposals, enjoys all the properties that make univariate ranks a successful tool for statistical inference. Just as their univariate counterparts (to which they reduce in dimension one), center-outward ranks allow for the construction of distribution-free and asymptotically efficient tests for a variety of problems where the density of some noise or innovation remains unspecified. The actual implementation of these tests involves the somewhat arbitrary choice of a grid. While the asymptotic impact of that choice is nil, its finite-sample consequences are not. In this note, we investigate the finite-sample impact of that choice in the typical context of the multivariate two-sample location problem.
翻译:在半个多世纪以来,将等级和四分位数的双重单项概念扩大到第二层面和更高层面,仍然是一个尚未解决的难题。根据测量运输结果,最近以名称中外等级和四分位数提出了解决办法,与以前的提议相反,它们拥有使单项分类成为成功的统计推理工具的所有属性。正如它们的单项对应方(在尺寸一中减少的),中外等级允许为一些噪音或创新的密度仍然不明的各类问题进行无分配和无现效的测试。这些测试的实际实施涉及对网格的某种任意选择。虽然这种选择的无足轻重影响,但其有限的抽样后果则不是。在本说明中,我们研究了这一选择在多变量两个抽样地点问题的典型背景下的有限抽样影响。