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An Empirical Process View of Inverse Regression

机译:逆回归的经验过程观

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摘要

A common approach taken in high-dimensional regression analysis is sliced inverse regression, which separates the range of the response variable into non-overlapping regions, called slices'. Asymptotic results are usually shown assuming that the slices are fixed, while in practice, estimators are computed with random slices containing the same number of observations. Based on empirical process theory, we present a unified theoretical framework to study these techniques, and revisit popular inverse regression estimators. Furthermore, we introduce a bootstrap methodology that reproduces the laws of Cramer-von Mises test statistics of interest to model dimension, effects of specified covariates and whether or not a sliced inverse regression estimator is appropriate. Finally, we investigate the accuracy of different bootstrap procedures by means of simulations.
机译:高维回归分析中采用的一种常见方法是切片逆回归,它将响应变量的范围分为非重叠区域,称为切片。通常在假设切片固定的情况下显示渐近结果,而实际上,估计量是使用包含相同观察值的随机切片来计算的。基于经验过程理论,我们提出了一个统一的理论框架来研究这些技术,并重新审视流行的逆回归估计量。此外,我们引入了一种自举方法,该方法可以重现模型所关注的Cramer-von Mises测试统计量的定律,模型维,指定协变量的影响以及切片逆回归估计量是否合适。最后,我们通过仿真研究了不同引导程序的准确性。

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