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On the efficiency of the de-biased Lasso

Abstract

We consider the high-dimensional linear regression model Y=Xβ0+ϵY = X \beta^0 + \epsilon with Gaussian noise ϵ\epsilon and Gaussian random design XX. We assume that Σ:=EXTX/n\Sigma:= E X^T X / n is non-singular and write its inverse as Θ:=Σ1\Theta := \Sigma^{-1}. The parameter of interest is the first component β10\beta_1^0 of β0\beta^0. We show that in the high-dimensional case the asymptotic variance of a debiased Lasso estimator can be smaller than Θ1,1\Theta_{1,1}. For some special such cases we establish asymptotic efficiency. The conditions include β0\beta^0 being sparse and the first column Θ1\Theta_1 of Θ\Theta being not sparse. These conditions depend on whether Σ\Sigma is known or not.

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