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Adaptive spectral regularizations of high dimensional linear models

26 December 2011
Yu. Golubev
ArXiv (abs)PDFHTML
Abstract

This paper focuses on recovering an unknown vector β\betaβ from the noisy data Y=Xβ+σξY=X\beta +\sigma\xiY=Xβ+σξ, where XXX is a known n×pn\times pn×p-matrix, ξ\xi ξ is a standard white Gaussian noise, and σ\sigmaσ is an unknown noise level. In order to estimate β\betaβ, a spectral regularization method is used, and our goal is to choose its regularization parameter with the help of the data YYY. In this paper, we deal solely with regularization methods based on the so-called ordered smoothers and provide some oracle inequalities in the case, where the noise level is unknown.

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