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Infinite order cross-validated local polynomial regression

机译:无限次交叉验证局部多项式回归

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摘要

Many practical problems require nonparametric estimates of regression functions, and local polynomial regression has emerged as a leading approach. In applied settings practitioners often adopt either the local constant or local linear variants, or choose the order of the local polynomial to be slightly greater than the order of the maximum derivative estimate required. But such ad hoc determination of the polynomial order may not be optimal in general, while the joint determination of the polynomial order and bandwidth presents some interesting theoretical and practical challenges. In this paper we propose a data-driven approach towards the joint determination of the polynomial order and bandwidth, provide theoretical underpinnings, and demonstrate that improvements in both finite-sample efficiency and rates of convergence can thereby be obtained. In the case where the true data generating process (DGP) is in fact a polynomial whose order does not depend on the sample size, our method is capable of attaining the rate often associated with correctly specified parametric models, while the estimator is shown to be uniformly consistent for a much larger class of DGPs. Theoretical underpinnings are provided and finite-sample properties are examined. (C) 2014 Elsevier B.V. All rights reserved.
机译:许多实际问题需要回归函数的非参数估计,并且局部多项式回归已成为一种领先的方法。在应用的环境中,从业人员通常采用局部常数或局部线性变量,或者选择局部多项式的阶数稍大于所需的最大导数估计的阶数。但是,多项式阶数的这种临时确定通常可能不是最佳的,而多项式阶数和带宽的联合确定提出了一些有趣的理论和实践挑战。在本文中,我们提出了一种数据驱动的方法来联合确定多项式阶数和带宽,提供了理论基础,并证明了可以同时获得有限样本效率和收敛速度的改进。如果真实数据生成过程(DGP)实际上是一个多项式,其阶数不取决于样本大小,则我们的方法能够获得经常与正确指定的参数模型相关的速率,而估计量显示为对于更大类别的DGP而言,始终保持一致。提供了理论基础,并研究了有限样本属性。 (C)2014 Elsevier B.V.保留所有权利。

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