ARMA models and the Box–Jenkins methodology

ARMA models and the Box–Jenkins methodology

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Article ID: iaor19983132
Country: United Kingdom
Volume: 16
Issue: 3
Start Page Number: 147
End Page Number: 163
Publication Date: May 1997
Journal: International Journal of Forecasting
Authors: ,
Keywords: ARIMA processes
Abstract:

The purpose of this paper is to apply the Box–Jenkins methodology to ARIMA models and determine the reasons why in empirical tests it is found that post-sample forecasting of the accuracy of such models is generally worse than much simpler time series methods. The paper concludes that the major problem is the way of making the series stationary in its mean (i.e. the method of differencing) that has been proposed by Box and Jenkins. If alternative approaches are utilized to remove and extrapolate the trend in the data, ARMA models outperform the models selected through Box–Jenkins methodology. In addition, it is shown that using ARMA models for seasonally adjusted data slightly improves post-sample accuracies while simplifying the use of ARMA models. It is also confirmed that transformations slightly improve post-sample forecasting accuracy, particularly for long forecasting horizons. Finally, it is demonstrated that AR(1), AR(2) and ARMA(1,1) models can produce more accurate post-sample forecasts than those found through the application of Box–Jenkins methodology.

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