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Minimax estimation of the noise level and of the deconvolution density in a semiparametric convolution model

机译:半参数卷积模型中的噪声水平和反卷积密度的Minimax估计

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摘要

We consider a semiparametric convolution model where the noise has known Fourier transform which decays asymptotically as an exponential with unknown scale parameter; the deconvolution density is less smooth than the noise in the sense that the tails of the Fourier transform decay more slowly, ensuring the identifiability of the model. We construct a consistent estimation procedure for the noise level and prove that its rate is optimal in the minimax sense. Two convergence rates are distinguished according to different smoothness properties for the unknown densit. If the tail of its Fourier transform does not decay faster than exponentially, the asymptotic optimal rate and exact constant are evaluated, while if it does not decay faster than polynomially, this rate is evaluated up to a constant. Moreover, we construct a consistent estimator of the unknown density, by using a plug-in method in the classical kernel estimation procedure. We establish that the rates of estimation of the deconvolution density are slower than in the case of an entirely known noise distribution. In fact, nonparametric rates of convergence are equal to the rate of estimation of the noise level, and we prove that these rates are minimax. in a few specific cases the plug-in method converges at even slower rates.
机译:我们考虑一个半参数卷积模型,其中噪声具有已知的傅里叶变换,该傅里叶变换作为具有未知比例参数的指数渐近衰减。在傅立叶变换的尾部衰减更慢的意义上,反卷积密度不如噪声平滑,从而确保了模型的可识别性。我们构建了一个一致的噪声级估计程序,并证明了其速率在极小极大意义上是最优的。根据未知密度的不同平滑度特性,可以区分两个收敛速率。如果其傅立叶变换的尾部衰减不快于指数,则评估渐近最优速率和精确常数,而如果其衰减不快于多项式,则评估该速率直至常数。此外,我们在经典核估计程序中使用插件方法构造了未知密度的一致估计器。我们确定,解卷积密度的估计速率比完全已知的噪声分布情况要慢。实际上,非参数收敛率等于噪声水平的估计率,我们证明了这些率是极小极大值。在某些特定情况下,插件方法的收敛速度甚至更低。

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