Nonparametric Kernel Estimation of Evolutionary Autoregressive Processes

Woocheol Kim
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引用次数: 7

Abstract

This paper develops a new econometric tool for evolutionary autoregressive models where the AR coefficients change smoothly over time. To estimate the unknown functional form of time-varying coefficients, we propose a mdified local linear smoother. The asymptotic normality and variance of the new estimator are derived by extending Phillips and Solo device to the case of evolutionary linear processes. As an application for statistical inference, we show how Wald tests for stationarity and misspecification could be formulated based on finite-dimensional distributions of the kernel estimates. We also examine the finite sample performance of the method via numerical simulations. As an empirical illustration, the method is applied to the real data of US stock returns.
演化自回归过程的非参数核估计
本文为AR系数随时间平滑变化的进化自回归模型开发了一种新的计量工具。为了估计时变系数的未知函数形式,我们提出了一种改进的局部线性光滑器。将Phillips和Solo装置推广到演化线性过程,得到了新估计量的渐近正态性和方差。作为统计推断的一个应用,我们展示了如何基于核估计的有限维分布来制定平稳性和错误规范的Wald检验。我们还通过数值模拟检验了该方法的有限样本性能。作为实证说明,将该方法应用于美国股票收益的真实数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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