Literature DB >> 35756192

Adaptive Huber Regression on Markov-dependent Data.

Jianqing Fan1, Yongyi Guo1, Bai Jiang1.   

Abstract

High-dimensional linear regression has been intensively studied in the community of statistics in the last two decades. For the convenience of theoretical analyses, classical methods usually assume independent observations and sub-Gaussian-tailed errors. However, neither of them hold in many real high-dimensional time-series data. Recently [Sun, Zhou, Fan, 2019, J. Amer. Stat. Assoc., in press] proposed Adaptive Huber Regression (AHR) to address the issue of heavy-tailed errors. They discover that the robustification parameter of the Huber loss should adapt to the sample size, the dimensionality, and the moments of the heavy-tailed errors. We progress in a vertical direction and justify AHR on dependent observations. Specifically, we consider an important dependence structure - Markov dependence. Our results show that the Markov dependence impacts on the adaption of the robustification parameter and the estimation of regression coefficients in the way that the sample size should be discounted by a factor depending on the spectral gap of the underlying Markov chain.

Entities:  

Keywords:  Adaptive Huber Regression; Markov chain; dependent observations; heavy-tailed errors; high-dimensional regression

Year:  2019        PMID: 35756192      PMCID: PMC9216183          DOI: 10.1016/j.spa.2019.09.004

Source DB:  PubMed          Journal:  Stoch Process Their Appl        ISSN: 0304-4149            Impact factor:   1.430


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