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Testing for serial correlation of unknown form in cointegrated time series models

机译:在协整时间序列模型中测试未知形式的序列相关性

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摘要

Portmanteau test statistics are useful for checking the adequacy of many time series models. Here we generalized the omnibus procedure proposed by Duchesne and Roy (2004,Journal of Multivariate Analysis,89, 148–180) for multivariate stationary autoregressive models with exogenous variables (VARX) to the case of cointegrated (or partially nonstationary) VARX models. We show that for cointegrated VARX time series, the test statistic obtained by comparing the spectral density of the errors under the null hypothesis of non-correlation with a kernel-based spectral density estimator, is asymptotically standard normal. The parameters of the model can be estimated by conditional maximum likelihood or by asymptotically equivalent estimation procedures. The procedure relies on a truncation point or a smoothing parameter. We state conditions under which the asymptotic distribution of the test statistic is unaffected by a data-dependent method. The finite sample properties of the test statistics are studied via a small simulation study.
机译:Portmanteau测试统计信息对于检查许多时间序列模型是否足够有用。在这里,我们将Duchesne和Roy(2004,Journal of Multivariate Analysis,89,148-180)针对具有外生变量(VARX)的多元平稳自回归模型提出的综合程序推广到协整(或部分非平稳)VARX模型的情况。我们表明,对于协整的VARX时间序列,通过将不相关的零假设下的误差的光谱密度与基于核的光谱密度估计器进行比较而获得的检验统计量是渐近标准正态分布。可以通过条件最大似然或渐近等效估计程序来估计模型的参数。该过程依赖于截断点或平滑参数。我们陈述了一种条件,在该条件下,检验统计量的渐近分布不受数据依赖方法的影响。测试统计的有限样本属性通过一个小型仿真研究进行了研究。

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