We consider the high-dimensional linear regression model with Gaussian noise and Gaussian random design . We assume that is non-singular and write its inverse as . The parameter of interest is the first component of . We show that in the high-dimensional case the asymptotic variance of a debiased Lasso estimator can be smaller than . For some special such cases we establish asymptotic efficiency. The conditions include being sparse and the first column of being not sparse. These conditions depend on whether is known or not.
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