Wavelet block thresholding for samples with random design: a minimax approach under the L^p risk
classification
🧮 math.ST
stat.TH
keywords
blockdesignminimaxrandomriskthresholdingunderwavelet
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We consider the regression model with (known) random design. We investigate the minimax performances of an adaptive wavelet block thresholding estimator under the $\mathbb{L}^p$ risk with $p\ge 2$ over Besov balls. We prove that it is near optimal and that it achieves better rates of convergence than the conventional term-by-term estimators (hard, soft,...).
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