4.6 Article

ADAPTIVE ROBUST ESTIMATION IN SPARSE VECTOR MODEL

Journal

ANNALS OF STATISTICS
Volume 49, Issue 3, Pages 1347-1377

Publisher

INST MATHEMATICAL STATISTICS-IMS
DOI: 10.1214/20-AOS2002

Keywords

Sparse vector model; variance estimation; functional estimation; robust estimation; adaptive estimation; minimax rate

Funding

  1. project Labex MME-DII [ANR11-LBX-0023-01]
  2. GENES
  3. French National Research Agency (ANR) [ANR-13-BSH1-0004-02, ANR-11-LABEX-0047]

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This paper discusses the estimation of the target vector, its l(2)-norm, and the noise variance in the sparse vector model, with a focus on adaptive estimation rates in different scenarios and the impact of noise distribution on the rates.
For the sparse vector model, we consider estimation of the target vector, of its l(2)-norm and of the noise variance. We construct adaptive estimators and establish the optimal rates of adaptive estimation when adaptation is considered with respect to the triplet noise level-noise distribution-sparsity. We consider classes of noise distributions with polynomially and exponentially decreasing tails as well as the case of Gaussian noise. The obtained rates turn out to be different from the minimax nonadaptive rates when the triplet is known. A crucial issue is the ignorance of the noise variance. Moreover, knowing or not knowing the noise distribution can also influence the rate. For example, the rates of estimation of the noise variance can differ depending on whether the noise is Gaussian or sub-Gaussian without a precise knowledge of the distribution. Estimation of noise variance in our setting can be viewed as an adaptive variant of robust estimation of scale in the contamination model, where instead of fixing the nominal distribution in advance we assume that it belongs to some class of distributions.

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