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Research Report SRR98-001
Wavelet shrinkage for correlated data and inverse problems - adaptivity results
Iain M. Johnstone
Abstract:
Johnstone and Silverman (1997) described a level-dependent
thresholding method for extracting signals from correlated noise. The
thresholds were chosen to minimize a data based unbiased risk
criterion. Here we show that in certain asymptotic models encompassing short
and long range dependence, these methods are simultaneously
asymptotically minimax up to constants over a broad range of
Besov classes. We indicate the extension of the methods and results
to a class of linear inverse problems problems possessing a wavelet
vaguelette decomposition.
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