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Martingale Difference Correlation and Its Use in High-Dimensional Variable Screening

机译:ting差相关及其在高维变量筛选中的应用

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摘要

In this article, we propose a new metric, the so-called martingale difference correlation, to measure the departure of conditional mean independence between a scalar response variable Ⅴ and a vector predictor variable U. Our metric is a natural extension of distance correlation proposed by Szekely, Rizzo, and Bahirov, which is used to measure the dependence between V and U. The martingale difference correlation and its empirical counterpart inherit a number of desirable features of distance correlation and sample distance correlation, such as algebraic simplicity and elegant theoretical properties. We further use martingale difference correlation as a marginal utility to do high-dimensional variable screening to screen out variables that do not contribute to conditional mean of the response given the covariates. Further extension to conditional quantile screening is also described in detail and sure screening properties are rigorously justified. Both simulation results and real data illustrations demonstrate the effectiveness of martingale difference correlation-based screening procedures in comparison with the existing counterparts. Supplementary materials for this article are available online.
机译:在本文中,我们提出了一种新的度量标准,即所谓的mar差异相关性,用于测量标量响应变量Ⅴ与矢量预测变量U之间的条件均值独立性的偏离。我们的度量标准是距离相关性的自然扩展,由Szekely,Rizzo和Bahirov用于测量V和U之间的依赖性。difference差相关及其经验对等继承了距离相关和样本距离相关的许多理想功能,例如代数简单性和优雅的理论性质。我们进一步使用mar差相关作为边际效用进行高维变量筛选,以筛选出在给定协变量的情况下不影响响应的条件均值的变量。还详细描述了对条件分位数筛选的进一步扩展,并确保严格证明筛选性质的合理性。仿真结果和真实数据说明都证明了与现有同类产品相比,基于difference差异相关性的筛选程序的有效性。可在线获得本文的补充材料。

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