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首页> 外文期刊>Journal of Econometrics >Functional-Coefficient Models for Nonstationary Time Series Data.
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Functional-Coefficient Models for Nonstationary Time Series Data.

机译:非平稳时间序列数据的功能系数模型。

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This paper studies functional coefficient regression models with nonstationary time series data, allowing also for stationary covariates. A local linear fitting scheme is developed to estimate the coefficient functions. The asymptotic distributions of the estimators are obtained, showing different convergence rates for the stationary and nonstationary covariates. A two-stage approach is proposed to achieve estimation optimality in the sense of minimizing the asymptotic mean squared error. When the coefficient function is a function of a nonstationary variable, the new findings are that the asymptotic bias of its nonparametric estimator is the same as the stationary covariate case but convergence rate differs, and further, the asymptotic distribution is a mixed normal, associated with the local time of a standard Brownian motion. The asymptotic behavior at boundaries is also investigated.
机译:本文研究具有非平稳时间序列数据的功能系数回归模型,并且还允许平稳协变量。开发了局部线性拟合方案以估计系数函数。获得估计量的渐近分布,显示出平稳和非平稳协变量的收敛速度不同。在最小化渐进均方误差的意义上,提出了一种两阶段方法来实现估计最优性。当系数函数是非平稳变量的函数时,新发现是其非参数估计量的渐近偏差与平稳协变量情况相同,但收敛速度不同,此外,渐近分布是混合正态分布,与标准布朗运动的本地时间。还研究了边界上的渐近行为。

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