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Global uniform risk bounds for wavelet deconvolution estimators

  • University of Cambridge

Résultats de recherche: Contribution à un journalArticleRevue par des pairs

Résumé

We consider the statistical deconvolution problem where one observes n replications from the model Y = X + ε, where X is the unobserved random signal of interest and ε is an independent random error with distribution φ. Under weak assumptions on the decay of the Fourier transform of φ, we derive upper bounds for the finite-sample sup-norm risk of wavelet deconvolution density estimators fn for the density f of X, where f ℝ→ℝ is assumed to be bounded. We then derive lower bounds for the minimax supnorm risk over Besov balls in this estimation problem and show that wavelet deconvolution density estimators attain these bounds. We further show that linear estimators adapt to the unknown smoothness of f if the Fourier transform of φ decays exponentially and that a corresponding result holds true for the hard thresholding wavelet estimator if φ decays polynomially.We also analyze the case where f is a "supersmooth"/analytic density. We finally show how our results and recent techniques from Rademacher processes can be applied to construct global confidence bands for the density f .

langue originaleAnglais
Pages (de - à)201-231
Nombre de pages31
journalAnnals of Statistics
Volume39
Numéro de publication1
Les DOIs
étatPublié - 1 févr. 2011
Modification externeOui

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