Concentration Inequalities for Statistical Inference

Authors

  • Huiming Zhang School of Mathematical Sciences, Peking University, Beijing 100871, P.R. China.
  • Songxi Chen

DOI:

https://doi.org/10.4208/cmr.2020-0041

Keywords:

Constants-specified inequalities, sub-Weibull random variables, heavy-tailed distributions, high-dimensional estimation and testing, finite-sample theory, random matrices.

Abstract

This paper gives a review of concentration inequalities which are widely employed in non-asymptotical analyses of mathematical statistics in a wide range of settings, from distribution-free to distribution-dependent, from sub-Gaussian to sub-exponential, sub-Gamma, and sub-Weibull random variables, and from the mean to the maximum concentration. This review provides results in these settings with some fresh new results. Given the increasing popularity of high-dimensional data and inference, results in the context of high-dimensional linear and Poisson regressions are also provided. We aim to illustrate the concentration inequalities with known constants and to improve existing bounds with sharper constants.

Published

2021-05-25

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How to Cite

Concentration Inequalities for Statistical Inference. (2021). Communications in Mathematical Research, 37(1), 1-85. https://doi.org/10.4208/cmr.2020-0041