Optimal Estimation of Derivatives in Nonparametric Regression

Wenlin Dai, T. Tong, M. Genton
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引用次数: 37

Abstract

We propose a simple framework for estimating derivatives without _tting the regression function in nonparametric regression. Unlike most existing methods that use the symmetric difference quotients, our method is constructed as a linear combination of observations. It is hence very exible and applicable to both interior and boundary points, including most existing methods as special cases of ours. Within this framework, we define the variance-minimizing estimators for any order derivative of the regression function with a fixed bias-reduction level. For the equidistant design, we derive the asymptotic variance and bias of these estimators. We also show that our new method will, for the first time, achieve the asymptotically optimal convergence rate for difference-based estimators. Finally, we provide an effective criterion for selection of tuning parameters and demonstrate the usefulness of the proposed method through extensive simulation studies of the first-and second-order derivative estimators.
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非参数回归导数的最优估计
我们提出了一个简单的框架来估计非参数回归中的导数,而不需要对回归函数进行设置。与大多数使用对称差商的现有方法不同,我们的方法被构造为观测值的线性组合。因此,它是非常灵活的,适用于内点和边界点,包括大多数现有的方法作为我们的特殊情况。在此框架内,我们定义了具有固定偏置减少水平的回归函数的任意阶导数的方差最小化估计量。对于等距设计,我们导出了这些估计量的渐近方差和偏置。我们还表明,我们的新方法将首次实现基于差分估计的渐近最优收敛率。最后,我们提供了一个选择调谐参数的有效准则,并通过对一阶和二阶导数估计量的广泛仿真研究证明了所提出方法的有效性。
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