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首页> 外文期刊>Journal of Statistical Planning and Inference >On optimal estimation of a non-smooth mode in a nonparametric regression model with alpha-mixing errors
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On optimal estimation of a non-smooth mode in a nonparametric regression model with alpha-mixing errors

机译:具有阿尔法混合误差的非参数回归模型中非光滑模式的最优估计

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摘要

We consider the problem of mode estimation in the fixed-design regression model, the regression function having a unique non-smooth mode. We estimate the mode by maximization over the curve estimator, which is given as a weighted mean of the observations, including most of the common kernel estimators, such as Gasser-Muller, Priestley-Chao and Nadaraya-Watson. To obtain optimal rates of convergence of the mode estimator, we first derive upper bounds, where we benefit from the contrast of the curve at the mode rather than taking into account the rate of uniform convergence of the curve estimator. In a next step we show that these rates are also optimal. We prove our results for alpha-mixing observations, and a non-smooth regression function that is only assumed to be Holder continuous. Our method consists in a rather direct evaluation of the mean squared error of the empirical mode, using a recent moment inequality of Rosenthal type due to Yang [2007. Maximal moment inequality for partial sums of strong mixing sequences and application. Acta Math. Sinica 23, 1013-1024] for mixing random variables.
机译:我们考虑固定设计回归模型中的模式估计问题,该回归函数具有唯一的非平滑模式。我们通过最大化曲线估计量来估计模式,曲线估计量是观察值的加权平均值,包括大多数常见的核估计量,例如Gasser-Muller,Priestley-Chao和Nadaraya-Watson。为了获得模式估计器的最佳收敛速度,我们首先导出上限,在此我们从模式处曲线的对比度中受益,而不是考虑曲线估计器的均匀收敛速度。在下一步中,我们表明这些速率也是最佳的。我们证明了我们对alpha混合观测的结果以及仅假定为Holder连续的非平滑回归函数。我们的方法包括使用杨致远[2007年]引起的Rosenthal型矩不等式,对经验模态的均方误差进行相当直接的评估。强混合序列和的部分和的最大矩不等式和应用。数学学报。 Sinica 23,1013-1024],用于混合随机变量。

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