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Wavelet-based estimation of regression function with strong mixing errors under fixed design

机译:固定设计下具有强混合误差的回归函数的基于小波的估计

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We consider wavelet-based non linear estimators, which are constructed by using the thresholding of the empirical wavelet coefficients, for the mean regression functions with strong mixing errors and investigate their asymptotic rates of convergence. We show that these estimators achieve nearly optimal convergence rates within a logarithmic term over a large range of Besov function classes B-p, q(s). The theory is illustrated with some numerical examples.A new ingredient in our development is a Bernstein-type exponential inequality, for a sequence of random variables with certain mixing structure and are not necessarily bounded or sub-Gaussian. This moderate deviation inequality may be of independent interest.
机译:我们考虑基于小波的非线性估计,通过使用经验小波系数的阈值化构成,用于平均回归功能,具有强的混合误差并研究其渐近收敛速率。我们表明,这些估计器在大型BESOV函数B-P,Q(S)中实现了对数期内的几乎最佳的收敛速率。该理论用一些数值示例进行说明。我们开发中的新成分是伯尔斯坦型指数不等式,对于具有某些混合结构的一系列随机变量,并且不一定有界或子高斯。这种温和的偏差不等式可能是独立的兴趣。

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