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Bootstrap for order identification in ARMA(P,Q) structures

机译:用于在ARMA(P,Q)结构中识别订单的引导程序

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The identification of de order p,q, of ARMA models is a critical step in time-series modelling. In classic Box-Jenkins method of identification the autocorrelation function (ACF) and the partial autocorrelation (PACF) function should be estimated, but the classical expressions used to measure the variability of the respective estimators are obtained on the basis of asymptotic results. In addition, when having sets of few observations, the traditional confidence intervals to test the null hypotheses display low performance. The bootstrap method may be an alternative for identifying the order of ARMA models, since it allows to obtain an approximation of the distribution of the statistics involved in this step. Therefore it is possible to obtain more accurate confidence intervals than those obtained by the classical method of identification. In this paper we propose a bootstrap procedure to identify the order of ARMA models. The algorithm was tested on simulated time series from models of structures AR(1), AR(2), AR(3), MA(1), MA(2), MA(3), ARMA(1,1) and ARMA (2,2). This way we determined the sampling distributions of ACF and PACF, free from the Gaussian assumption. The examples show that the bootstrap has good performance in samples of all sizes and that it is superior to the asymptotic method for small samples.
机译:ARMA模型的阶数p,q的识别是时序建模中的关键步骤。在经典的Box-Jenkins识别方法中,应该估计自相关函数(ACF)和部分自相关(PACF)函数,但是根据渐近结果获得用于测量各个估计量变化性的经典表达式。另外,当具有少量观察值的集合时,用于检验原假设的传统置信区间显示出较低的性能。引导方法可能是标识ARMA模型顺序的一种替代方法,因为它允许获得此步骤中所涉及统计信息分布的近似值。因此,与传统的识别方法相比,可以获得更准确的置信区间。在本文中,我们提出了一个引导程序来识别ARMA模型的顺序。从结构AR(1),AR(2),AR(3),MA(1),MA(2),MA(3),ARMA(1,1)和ARMA的模型的模拟时间序列上测试了该算法(2,2)。这样,我们就可以在没有高斯假设的情况下确定ACF和PACF的采样分布。实例表明,自举在所有大小的样本中均具有良好的性能,并且对于小样本而言,它优于渐近方法。

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