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IDENTIFICATION OF PERIODIC AUTOREGRESSIVE MOVING-AVERAGE TIME SERIES MODELS WITH R | Science Publications

机译:用R |识别周期自回归移动平均时间序列模型科学出版物

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> Periodic autoregressive moving average PARMA process extend the classical autoregressive moving average ARMA process by allowing the parameters to vary with seasons. Model identification is the identification of a possible model based on an available realization, i.e., determining the type of the model with appropriate orders. The Periodic Autocorrelation Function (PeACF) and the Periodic Partial Autocorrelation Function (PePACF) serve as useful indicators of the correlation or of the dependence between the values of the series so that they play an important role in model identification. The identification is based on the cut-off property of the Periodic Autocorrelation Function (PeACF). We derive an explicit expression for the asymptotic variance of the sample PeACF to be used in establishing its bands. Therefore, we will get in this study a new structure of the periodic autocorrelation function which depends directly to the variance that will derived to be used in establishing its bands for the PMA process over the cut-off region and we have studied the theoretical side and we will apply some simulated examples with R which agrees well with the theoretical results.
机译: >周期性自回归移动平均PARMA过程通过允许参数随季节变化而扩展了经典自回归移动平均ARMA过程。模型识别是基于可用实现的对可能模型的识别,即以适当的顺序确定模型的类型。周期性自相关函数(PeACF)和周期性部分自相关函数(PePACF)可以用作相关性或系列值之间依存关系的有用指标,因此它们在模型识别中起着重要作用。识别基于周期性自相关函数(PeACF)的截止属性。我们为样本PeACF的渐近方差导出一个明确的表达式,以用于建立其频带。因此,在这项研究中,我们将获得周期性自相关函数的新结构,该结构直接取决于方差,该方差将被用于建立其截止区域的PMA过程的能带,并研究了理论方面和我们将应用一些带有R的模拟实例,这些实例与理论结果非常吻合。

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