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High-Dimensional Expected Shortfall Regression

Methodology 2025-01-03 v2

Abstract

Expected shortfall is defined as the average over the tail below (or above) a certain quantile of a probability distribution. Expected shortfall regression provides powerful tools for learning the relationship between a response variable and a set of covariates while exploring the heterogeneous effects of the covariates. In the health disparity research, for example, the lower/upper tail of the conditional distribution of a health-related outcome, given high-dimensional covariates, is often of importance. Under sparse models, we propose the lasso-penalized expected shortfall regression and establish non-asymptotic error bounds, depending explicitly on the sample size, dimension, and sparsity, for the proposed estimator. To perform statistical inference on a covariate of interest, we propose a debiased estimator and establish its asymptotic normality, from which asymptotically valid tests can be constructed. We illustrate the finite sample performance of the proposed method through numerical studies and a data application on health disparity.

Keywords

Cite

@article{arxiv.2307.02695,
  title  = {High-Dimensional Expected Shortfall Regression},
  author = {Shushu Zhang and Xuming He and Kean Ming Tan and Wen-Xin Zhou},
  journal= {arXiv preprint arXiv:2307.02695},
  year   = {2025}
}

Comments

R code for fitting the proposed method can be found at https://github.com/shushuzh/ES_highD.git