4.6 Article

Exponential smoothing model selection for forecasting

Journal

INTERNATIONAL JOURNAL OF FORECASTING
Volume 22, Issue 2, Pages 239-247

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.ijforecast.2005.08.002

Keywords

model selection; exponential smoothing; information criteria; prediction; forecast validation

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Applications of exponential smoothing to forecasting time series usually rely on three basic methods: simple exponential smoothing, trend corrected exponential smoothing and a seasonal variation thereof A common approach to selecting the method appropriate to a particular time series is based on prediction validation on a withheld part of the sample using criteria such as the mean absolute percentage error. A second approach is to rely on the most appropriate general case of the three methods. For annual series this is trend corrected exponential smoothing: for sub-annual series it is the seasonal adaptation of trend corrected exponential smoothing. The rationale for this approach is that a general method automatically collapses to its nested counterparts when the pertinent conditions pertain in the data. A third approach may be based on an information criterion when maximum likelihood methods are used in conjunction with exponential smoothing to estimate the smoothing parameters. In this paper, such approaches for selecting the appropriate forecasting method are compared in a simulation study. They are also compared on real time series from the M3 forecasting competition. The results indicate that the information criterion approaches provide the best basis for automated method selection, the Akaike information criteria having a slight edge over its information criteria counterparts. (c) 2005 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.

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