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arxiv: 1403.6752 · v2 · pith:5CKRLAOTnew · submitted 2014-03-26 · 🧮 math.ST · stat.ME· stat.TH

Confidence intervals for high-dimensional inverse covariance estimation

classification 🧮 math.ST stat.MEstat.TH
keywords estimatorprecisionentrieshigh-dimensionalmatrixmethodanalyzedassociated
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We propose methodology for statistical inference for low-dimensional parameters of sparse precision matrices in a high-dimensional setting. Our method leads to a non-sparse estimator of the precision matrix whose entries have a Gaussian limiting distribution. Asymptotic properties of the novel estimator are analyzed for the case of sub-Gaussian observations under a sparsity assumption on the entries of the true precision matrix and regularity conditions. Thresholding the de-sparsified estimator gives guarantees for edge selection in the associated graphical model. Performance of the proposed method is illustrated in a simulation study.

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