Robust feature screening for multi-response trans-elliptical regression model with ultrahigh-dimensional covariates

Pub Date : 2020-10-01 DOI:10.1142/s2010326321500015
Yong He, Hao Sun, Jiadong Ji, Xinsheng Zhang
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Abstract

In this paper, we innovatively propose an extremely flexible semi-parametric regression model called Multi-response Trans-Elliptical Regression (MTER) Model, which can capture the heavy-tail characteristic and tail dependence of both responses and covariates. We investigate the feature screening procedure for the MTER model, in which Kendall’ tau-based canonical correlation estimators are proposed to characterize the correlation between each transformed predictor and the multivariate transformed responses. The main idea is to substitute the classical canonical correlation ranking index in [X. B. Kong, Z. Liu, Y. Yao and W. Zhou, Sure screening by ranking the canonical correlations, TEST 26 (2017) 1–25] by a carefully constructed non-parametric version. The sure screening property and ranking consistency property are established for the proposed procedure. Simulation results show that the proposed method is much more powerful to distinguish the informative features from the unimportant ones than some state-of-the-art competitors, especially for heavy-tailed distributions and high-dimensional response. At last, a real data example is given to illustrate the effectiveness of the proposed procedure.
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超高维协变量多响应跨椭圆回归模型的鲁棒特征筛选
本文创新性地提出了一种非常灵活的半参数回归模型——多响应跨椭圆回归(MTER)模型,该模型可以捕捉响应和协变量的重尾特征和尾依赖性。我们研究了MTER模型的特征筛选过程,其中提出了基于Kendall ' tau的典型相关估计器来表征每个转换后的预测器与多变量转换后的响应之间的相关性。主要思想是将经典的典型相关排序指标代入[X]。孔彬,刘志强,姚玉华,周伟,基于典型相关性排序的确定性筛选[j] .中文信息学报,26(2017):1-25。建立了该方法的可靠筛选性和排序一致性。仿真结果表明,该方法对信息特征和不重要特征的区分能力比现有的方法强得多,特别是对于重尾分布和高维响应。最后,通过一个实际的数据算例说明了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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