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首页> 外文期刊>Journal of Econometrics >Trending time-varying coefficient time series models with serially correlated errors
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Trending time-varying coefficient time series models with serially correlated errors

机译:具有序列相关误差的趋势时变系数时间序列模型

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摘要

This paper studies a time-varying coefficient time series model with a time trend function and serially correlated errors to characterize the nonlinearity, nonstationarity, and trending phenomenon. A local linear approach is developed to estimate thetime trend and coefficient functions. The asymptotic properties of the proposed estimators, coupled with their comparisons with other methods, are established under the alpha-mixing conditions and without specifying the error distribution. Further, the asymptotic behaviors of the estimators at the boundaries are examined. The practical problem of implementation is also addressed. In particular, a simple nonparametric version of a bootstrap test is adapted for testing misspecification and stationarity, together with a data-driven method for selecting the bandwidth and a consistent estimate of the standard errors. Finally, results of two Monte Carlo experiments are presented to examine the finite sample performances of the proposed procedures and an empirical example is discussed.
机译:本文研究具有时间趋势函数和序列相关误差的时变系数时间序列模型,以表征非线性,非平稳性和趋势现象。开发了一种局部线性方法来估计时间趋势和系数函数。拟议的估计量的渐近性质,以及它们与其他方法的比较,是在alpha混合条件下且未指定误差分布的情况下建立的。此外,检查了边界处的估计量的渐近行为。实施中的实际问题也得到解决。特别是,引导程序测试的简单非参数版本适用于测试错误指定和平稳性,以及用于选择带宽和标准误差的一致估计的数据驱动方法。最后,给出了两个蒙特卡罗实验的结果,以检验所提出程序的有限样本性能,并讨论了一个经验示例。

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