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High dimensional matrix estimation with unknown variance of the noise

13 December 2011
Olga Klopp
Stéphane Gaïffas
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Abstract

We propose a new pivotal method for estimating high-dimensional matrices. Assume that we observe a small set of entries or linear combinations of entries of an unknown matrix A_0A\_0A_0 corrupted by noise. We propose a new method for estimating A_0A\_0A_0 which does not rely on the knowledge or an estimation of the standard deviation of the noise σ\sigmaσ. Our estimator achieves, up to a logarithmic factor, optimal rates of convergence under the Frobenius risk and, thus, has the same prediction performance as previously proposed estimators which rely on the knowledge of σ\sigmaσ. Our method is based on the solution of a convex optimization problem which makes it computationally attractive.

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