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Estimating nonlinear additive models with nonstationarities and correlated errors

机译:估计具有非平稳性和相关误差的非线性加性模型

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In this paper, we study a nonparametric additive regression model suitable for a wide range of time series applications. Our model includes a periodic component, a deterministic time trend, various component functions of stochastic explanatory variables, and an AR(p) error process that accounts for serial correlation in the regression error. We propose an estimation procedure for the nonparametric component functions and the parameters of the error process based on smooth backfitting and quasimaximum likelihood methods. Our theory establishes convergence rates and the asymptotic normality of our estimators. Moreover, we are able to derive an oracle-type result for the estimators of the AR parameters: Under fairly mild conditions, the limiting distribution of our parameter estimators is the same as when the nonparametric component functions are known. Finally, we illustrate our estimation procedure by applying it to a sample of climate and ozone data collected on the Antarctic Peninsula.
机译:在本文中,我们研究了适用于各种时间序列应用的非参数加性回归模型。我们的模型包括周期性成分,确定性时间趋势,随机解释变量的各种成分函数以及考虑回归误差中序列相关性的AR(p)误差过程。我们提出了一种基于平滑后拟合和拟最大似然方法的非参数分量函数和误差过程参数的估计程序。我们的理论建立了收敛速度和估计量的渐近正态性。此外,我们能够为AR参数的估算器得出oracle类型的结果:在相当温和的条件下,我们的参数估算器的极限分布与已知非参数分量函数时的极限分布相同。最后,我们通过将其应用于南极半岛收集的气候和臭氧数据样本来说明我们的估算程序。

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