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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Local Polynomial Fitting with Long-Memory, Short-Memory and Antipersistent Errors
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Local Polynomial Fitting with Long-Memory, Short-Memory and Antipersistent Errors

机译:具有长存储,短存储和反持久错误的局部多项式拟合

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摘要

Local polynomial smoothing for the trend function and its derivatives in nonparametric regression with long-memory, short-memory and antipersistent errors is considered. We show that in the case of antipersistence, the convergence rate of a nonparametric regression estimator is faster than for uncorrelated or short-range dependent errors. Moreover, it is shown that unified asymptotic formulas for the optimal bandwidth and the MSE hold for all of the three dependence structures. Also, results on estimation at the boundary are included. A bandwidth selector for nonparametric regression with different types of dependent errors is proposed. Its asymptotic property is investigated. The practical performance of the proposal is illustrated by simulated and real data examples.
机译:考虑具有长期记忆,短期记忆和反持久误差的非参数回归中趋势函数及其导数的局部多项式平滑。我们表明,在非持久性的情况下,非参数回归估计量的收敛速度要快于不相关或短距离相关误差的收敛速度。此外,表明对于三个依赖结构的所有,最优带宽和MSE的统一渐近公式成立。另外,还包括边界处的估计结果。提出了一种用于非参数回归的具有不同类型相关误差的带宽选择器。研究其渐近性质。通过模拟和真实数据示例说明了该提案的实际性能。

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