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首页> 外文期刊>Bernoulli: official journal of the Bernoulli Society for Mathematical Statistics and Probability >A robust, adaptive M-estimator for pointwise estimation in heteroscedastic regression
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A robust, adaptive M-estimator for pointwise estimation in heteroscedastic regression

机译:用于异方差回归的逐点估计的鲁棒自适应M估计器

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摘要

We introduce a robust and fully adaptive method for pointwise estimation in heteroscedastic regression. We allow for noise and design distributions that are unknown and fulfill very weak assumptions only. In particular, we do not impose moment conditions on the noise distribution. Moreover, we do not require a positive density for the design distribution. In a first step, we study the consistency of locally polynomial M-estimators that consist of a contrast and a kernel. Afterwards, minimax results are established over unidimensional Holder spaces for degenerate design. We then choose the contrast and the kernel that minimize an empirical variance term and demonstrate that the corresponding M-estimator is adaptive with respect to the noise and design distributions and adaptive (Huber) minimax for contamination models. In a second step, we additionally choose a data-driven bandwidth via Lepski's method. This leads to an M-estimator that is adaptive with respect to the noise and design distributions and, additionally, adaptive with respect to the smoothness of an isotropic, multivariate, locally polynomial target function. These results are also extended to anisotropic, locally constant target functions. Our data-driven approach provides, in particular, a level of robustness that adapts to the noise, contamination, and outliers.
机译:我们为异方差回归中的逐点估计引入了一种鲁棒且完全自适应的方法。我们允许未知的噪声和设计分布,并且仅满足非常弱的假设。特别是,我们不对噪声分布施加力矩条件。此外,我们不需要为设计分布提供正密度。第一步,我们研究由对比度和核组成的局部多项式M估计的一致性。然后,在单维Holder空间上建立minimax结果以进行退化设计。然后,我们选择使经验方差项最小的对比度和核,并证明相应的M估计量对于噪声和设计分布以及污染模型的自适应(Huber)minimax是自适应的。第二步,我们另外通过Lepski的方法选择数据驱动的带宽。这导致M估计器关于噪声和设计分布是自适应的,并且此外,关于各向同性,多元,局部多项式目标函数的平滑性是自适应的。这些结果也扩展到各向异性,局部恒定的目标函数。我们的数据驱动方法尤其提供了一定程度的鲁棒性,以适应噪声,污染和离群值。

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