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Sharp adaptive estimation by a blockwise method

机译:逐块方法进行敏锐的自适应估计

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We consider a blockwise James-Stein estimator for nonparametric function estimation in suitable wavelet or Fourier bases. The estimator can be readily explained and implemented. We show that the estimator is asymptotically sharp adaptive in minimax risk over any Sobolev ball containing the true function. Further, for a moderately broad range of bounded sets in the Besov space our estimator is asymptotically nearly sharp adaptive in the sense that it comes within the Donoho-Liu constant, 1.24, of being exactly sharp adaptive. Other parameter spaces are also considered. The paper concludes with a Monte-Carlo study comparing the performance of our estimator with that of three other popular wavelet estimators. Our procedure generally (but not always) outperforms two of these and is overall comparable, or perhaps slightly superior, with the third.
机译:我们考虑在合适的小波或傅立叶基数中对非参数函数估计使用逐块James-Stein估计。估计器可以很容易地解释和实现。我们表明,对于任何包含真实函数的Sobolev球,估计器在minimax风险中都具有渐近的尖锐适应性。此外,对于Besov空间中的适度范围内的有界集,我们的估计器渐近接近于锐度自适应,这是因为它位于正精确自适应的Donoho-Liu常数1.24内。还考虑其他参数空间。本文以蒙特卡洛研究为结尾,将我们的估计器的性能与其他三种流行的小波估计器的性能进行了比较。我们的程序通常(但不总是)胜过其中两个,并且总体上可与第三个媲美,或略胜一筹。

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