De-biasing the Lasso: Optimal Sample Size for Gaussian Designs
Adel Javanmard, Andrea Montanari

TL;DR
This paper improves the understanding of high-dimensional linear regression inference by establishing nearly optimal sparsity conditions under which the debiased Lasso estimator is asymptotically Gaussian, especially for Gaussian designs with known or estimable covariance.
Contribution
It extends previous results by proving asymptotic Gaussianity under weaker sparsity conditions, approaching optimal sample size requirements for Gaussian design matrices.
Findings
Debiased estimator is asymptotically Gaussian under $s_0 = o(n/ (\log p)^2)$ for known covariance.
Results hold for unknown covariance with sufficient estimation accuracy.
Proposes a minimax optimal estimator for Gaussian designs.
Abstract
Performing statistical inference in high-dimension is an outstanding challenge. A major source of difficulty is the absence of precise information on the distribution of high-dimensional estimators. Here, we consider linear regression in the high-dimensional regime . In this context, we would like to perform inference on a high-dimensional parameters vector . Important progress has been achieved in computing confidence intervals for single coordinates . A key role in these new methods is played by a certain debiased estimator that is constructed from the Lasso. Earlier work establishes that, under suitable assumptions on the design matrix, the coordinates of are asymptotically Gaussian provided is -sparse with . The condition …
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