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Testing for a Change of the Innovation Distribution in Nonparametric Autoregression: The Sequential Empirical Process Approach

机译:在非参数自回归中检验创新分布的变化:顺序经验过程方法

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We consider a nonparametric autoregression model under conditional heteroscedas-ticity with the aim to test whether the innovation distribution changes in time. To this end, we develop an asymptotic expansion for the sequential empirical process of nonparametrically estimated innovations (residuals). We suggest a Kolmogorov-Smirnov statistic based on the difference of the estimated innovation distributions built from the first 「ns」 and the last n -「ns」 residuals, respectively (0 ≤ s≤1). Weak convergence of the underlying stochastic process to a Gaussian process is proved under the null hypothesis of no change point. The result implies that the test is asymptotically distribution-free. Consistency against fixed alternatives is shown. The small sample performance of the proposed test is investigated in a simulation study and the test is applied to a data example.
机译:我们考虑条件异质性下的非参数自回归模型,以检验创新分布是否随时间变化。为此,我们为非参数估计的创新(残差)的顺序经验过程开发了渐近展开。我们建议根据分别从第一个“ ns”残差和最后一个n-“ ns”残差建立的估计创新分布的差(0≤s≤1)得出Kolmogorov-Smirnov统计量。在无变化点的零假设下,证明了随机过程向高斯过程的弱收敛。结果表明该检验是渐近无分布的。显示了与固定替代方案的一致性。在模拟研究中研究了拟议测试的小样本性能,并将该测试应用于数据示例。

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