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Local Linear Estimation of a Nonparametric Cointegration Model

机译:非参数协整模型的局部线性估计

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The nonparametric local linear method has superior properties compared with the local constant method in the independent and weak dependent data setting, see e.g. Fan and Gijbels (1996). Recently, much attention has been drawn to the nonparametric models with nonstationary data. Wang and Phillips (2009a) studied the asymptotic property of a local constant estimator of a nonparametric regression model with a nonstationary I(1) regressor. Sun and Li (2011) show a surprising result that for a semiparamtric varying coefficient model with nonstationary I(1) regressors, the local linear estimator has a faster rate of convergence than the local constant estimator. In this article, we study the asymptotic behavior of the local linear estimator for the same nonparametric regression model as considered by Wang and Phillips (2009a). We focus on the derivation of the joint asymptotic result of both the unknown regression function and its derivative function. We also examine the performance of the local linear estimator with the bandwidth selected by the data driven least squares cross validation (LS-CV) method. Simulation results show that the local linear estimator, coupled with the LS-CV selected bandwidth, enjoys substantial efficiency gains over the local constant estimator.
机译:在独立和弱相关数据设置中,非参数局部线性方法与局部常数方法相比具有更好的性能,请参见例如Fan和Gijbels(1996)。最近,人们对具有非平稳数据的非参数模型引起了极大的关注。 Wang and Phillips(2009a)研究了具有非平稳I(1)回归变量的非参数回归模型的局部常数估计的渐近性质。 Sun和Li(2011)显示出令人惊讶的结果,对于具有非平稳I(1)回归系数的半参数变化系数模型,局部线性估计量的收敛速度比局部常数估计量快。在本文中,我们研究了与Wang和Phillips(2009a)考虑的相同非参数回归模型的局部线性估计量的渐近行为。我们专注于未知回归函数及其导数函数的联合渐近结果的推导。我们还通过数据驱动的最小二乘交叉验证(LS-CV)方法选择的带宽来检查局部线性估计器的性能。仿真结果表明,局部线性估计器与LS-CV选择的带宽相结合,比局部常数估计器具有更高的效率增益。

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