Studying the multivariate extension of copula correlation yields a dimension reduction principle, which turns out to be strongly related with the `simple measure of conditional dependence' $T$ recently introduced by Azadkia & Chatterjee (2021). In the present paper, we identify and investigate the dependence structure underlying this dimension-reduction principle, provide a strongly consistent estimator for it, and demonstrate its broad applicability. For that purpose, we define a bivariate copula capturing the scale-invariant extent of dependence of an endogenous random variable $Y$ on a set of $d \geq 1$ exogenous random variables ${\bf X} = (X_1, \dots, X_d)$, and containing the information whether $Y$ is completely dependent on ${\bf X}$, and whether $Y$ and ${\bf X}$ are independent. The dimension reduction principle becomes apparent insofar as the introduced bivariate copula can be viewed as the distribution function of two random variables $Y$ and $Y^\prime$ sharing the same conditional distribution and being conditionally independent given ${\bf X}$. Evaluating this copula uniformly along the diagonal, i.e. calculating Spearman's footrule, leads to Azadkia and Chatterjee's `simple measure of conditional dependence' $T$. On the other hand, evaluating this copula uniformly over the unit square, i.e. calculating Spearman's rho, leads to a distribution-free coefficient of determination (a.k.a. copula correlation). Several real data examples illustrate the importance of the introduced methodology.
翻译:研究千叶相关联的多变延伸将产生一个降低维度原则,这与Azadkia & Chatterjee (2021年)最近推出的“有条件依赖的简单度量”$T$(Azadkia & Chatterjee (2021年))密切相关。在本文件中,我们确定并调查了这一降低维度原则所依据的依赖性结构,为该原则提供了一个非常一致的估算值,并展示了其广泛的适用性。为此,我们定义了一种双差差差差差差原则,其中反映了内生随机随机变量1美元对美元1美元外源随机变量的依附程度,美元=(X_1,\dts,X_d) 美元,其中包含了有关Y美元是否完全依赖美元xf X*美元原则的信息,以及美元和美元xff X} 原则是否独立。我们定义了双差差差差原则,从引入的双差可被视为两个随机变量的分布函数。 分享了这个基内基内基的直径的直线分配和直径直径直径的直径直径直线数据。