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New procedure for determining order of subset autoregressive integrated moving average (ARIMA) based on over-fitting concept

机译:基于过度拟合概念确定子集自回归综合移动平均值(ARIMA)顺序的新过程

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One of the most popular models that usually be used to predict time series data is Autoregressive Integrated Moving Average (ARIMA) model. The most crucial steps in ARIMA modeling are identification and selection the best model based on available data. These steps require a good understanding about the characteristics of the process in terms of their theoretical autocorrelation function (ACF) and partial autocorrelation function (PACF). In identification step, the goal is to match the patterns of the sample ACF and PACF with the patterns of theoretical ACF and PACF for determining an appropriate order of ARIMA, including order of subset ARIMA. In this paper, we propose the new procedure for determining the order of ARIMA based on over-fitting concept. The process is started from the simplest ARIMA model that all of parameters are statistically significant and determination of an additional order AR or MA is based on over-fitting concept, i.e. based on ACF of the residual model. This new proposed procedure is applied for constructing a subset ARIMA model of Indonesia's inflation data. The results show that the proposed procedure yields an appropriate order of subset ARIMA model for Indonesia's inflation data.
机译:通常用于预测时间序列数据的最受欢迎的模型之一是自回归综合移动平均值(ARIMA)模型。 ARIMA建模中最关键的步骤是识别和选择基于可用数据的最佳模型。这些步骤需要根据其理论自相关函数(ACF)和部分自相关函数(PACF)充分了解过程的特征。在识别步骤中,目标是使样本ACF和PACF的模式与理论ACF和PACF的模式相匹配,以确定ARIMA的适当顺序,包括ARIMA子集的顺序。在本文中,我们提出了基于过度拟合概念确定ARIMA顺序的新程序。该过程从最简单的ARIMA模型开始,该模型的所有参数在统计上都是有意义的,并且基于过拟合概念(即,基于残差模型的ACF)确定额外阶次AR或MA。该新提出的程序可用于构建印尼通货膨胀数据的子集ARIMA模型。结果表明,所提出的程序为印度尼西亚的通货膨胀数据产生了适当顺序的ARIMA子集模型。

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