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Research Report SRR00-001
Sharp adaptation for inverse problems with random noise
L. Cavalier and A. B. Tsybakov
Abstract:
We consider a heteroscedastic sequence space setup with
polynomially increasing variances of observations that allows to
treat a number of inverse problems, in particular multivariate
ones. We propose an adaptive estimator that attains simultaneously
exact asymptotic minimax constants on every ellipsoid of functions
within a wide scale (that includes ellipoids with polynomially and
exponentially decreasing axes) and, at the same time, satisfies
asymptotically exact oracle inequalities within any class of
linear estimates having monotone non-decreasing weights. As
application, we construct sharp adaptive estimators in the
problems of deconvolution and tomography.
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