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Robust High-Dimensional Regression with Coefficient Thresholding and its Application to Imaging Data Analysis

Authors :
Liu, Bingyuan
Zhang, Qi
Xue, Lingzhou
Song, Peter X. K.
Kang, Jian
Publication Year :
2021

Abstract

It is of importance to develop statistical techniques to analyze high-dimensional data in the presence of both complex dependence and possible outliers in real-world applications such as imaging data analyses. We propose a new robust high-dimensional regression with coefficient thresholding, in which an efficient nonconvex estimation procedure is proposed through a thresholding function and the robust Huber loss. The proposed regularization method accounts for complex dependence structures in predictors and is robust against outliers in outcomes. Theoretically, we analyze rigorously the landscape of the population and empirical risk functions for the proposed method. The fine landscape enables us to establish both {statistical consistency and computational convergence} under the high-dimensional setting. The finite-sample properties of the proposed method are examined by extensive simulation studies. An illustration of real-world application concerns a scalar-on-image regression analysis for an association of psychiatric disorder measured by the general factor of psychopathology with features extracted from the task functional magnetic resonance imaging data in the Adolescent Brain Cognitive Development study.<br />Comment: 38 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2109.14856
Document Type :
Working Paper