A New Perspective on Debiasing Linear Regressions
Yufei Yi, Matey Neykov

TL;DR
This paper introduces a general debiasing procedure for high-dimensional linear models, enabling valid confidence intervals and applying to various constrained and regularized estimators, with practical implementation examples.
Contribution
It presents a novel abstract debiasing framework applicable to multiple high-dimensional regression methods, including constrained least squares and regularized procedures, solving open problems in covariance-unknown settings.
Findings
Produces $rac{1}{ ext{sqrt}(n)}$-confidence intervals for model parameters.
Applicable to convex constrained least squares and regularized methods like group LASSO and SLOPE.
Validated by simulation results supporting theoretical guarantees.
Abstract
In this paper, we propose an abstract procedure for debiasing constrained or regularized potentially high-dimensional linear models. It is elementary to show that the proposed procedure can produce -confidence intervals for individual coordinates (or even bounded contrasts) in models with unknown covariance, provided that the covariance has bounded spectrum. While the proof of the statistical guarantees of our procedure is simple, its implementation requires more care due to the complexity of the optimization programs we need to solve. We spend the bulk of this paper giving examples in which the proposed algorithm can be implemented in practice. One fairly general class of instances which are amenable to applications of our procedure include convex constrained least squares. We are able to translate the procedure to an abstract algorithm over this class of models,…
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Taxonomy
TopicsStatistical Methods and Inference · Gaussian Processes and Bayesian Inference · Sparse and Compressive Sensing Techniques
