De-biasing convex regularized estimators and interval estimation in linear models
Pierre C Bellec, Cun-Hui Zhang

TL;DR
This paper develops new bounds and asymptotic normality results for de-biased estimators in high-dimensional linear models with convex regularizers, broadening the scope of inference methods.
Contribution
It introduces novel bounds for the distribution of de-biased estimators and extends asymptotic normality results to arbitrary convex penalties in high-dimensional linear regression.
Findings
New upper bounds for the distribution of linear and quadratic functions of Gaussian variables.
Asymptotic normality of de-biased estimators under broad conditions, including non-separable penalties.
Applicability to high-dimensional regression with correlated design and convex regularizers.
Abstract
New upper bounds are developed for the distance between and linear and quadratic functions of for random variables of the form . The linear approximation yields a central limit theorem when the squared norm of dominates the squared Frobenius norm of in expectation. Applications of this normal approximation are given for the asymptotic normality of de-biased estimators in linear regression with correlated design and convex penalty in the regime for constant . For the estimation of linear functions of the unknown coefficient vector , this analysis leads to asymptotic normality of the de-biased estimate for most normalized directions , where ``most'' is quantified in a precise sense. This asymptotic…
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