Exponential smoothing: The state of the art
- 1 January 1985
- journal article
- research article
- Published by Wiley in Journal of Forecasting
- Vol. 4 (1) , 1-28
- https://doi.org/10.1002/for.3980040103
Abstract
This paper is a critical review of exponential smoothing since the original work by Brown and Holt in the 1950s. Exponential smoothing is based on a pragmatic approach to forecasting which is shared in this review. The aim is to develop state‐of‐the‐art guidelines for application of the exponential smoothing methodology. The first part of the paper discusses the class of relatively simple models which rely on the Holt‐Winters procedure for seasonal adjustment of the data. Next, we review general exponential smoothing (GES), which uses Fourier functions of time to model seasonality. The research is reviewed according to the following questions. What are the useful properties of these models? What parameters should be used? How should the models be initialized? After the review of model‐building, we turn to problems in the maintenance of forecasting systems based on exponential smoothing. Topics in the maintenance area include the use of quality control models to detect bias in the forecast errors, adaptive parameters to improve the response to structural changes in the time series, and two‐stage forecasting, whereby we use a model of the errors or some other model of the data to improve our initial forecasts. Some of the major conclusions: the parameter ranges and starting values typically used in practice are arbitrary and may detract from accuracy. The empirical evidence favours Holt's model for trends over that of Brown. A linear trend should be damped at long horizons. The empirical evidence favours the Holt‐Winters approach to seasonal data over GES. It is difficult to justify GES in standard form–the equivalent ARIMA model is simpler and more efficient. The cumulative sum of the errors appears to be the most practical forecast monitoring device. There is no evidence that adaptive parameters improve forecast accuracy. In fact, the reverse may be true.Keywords
This publication has 104 references indexed in Scilit:
- General exponential smoothing and the equivalent arma processJournal of Forecasting, 1984
- The accuracy of extrapolation (time series) methods: Results of a forecasting competitionJournal of Forecasting, 1982
- AN EMPIRICAL EVALUATION OF INDIVIDUAL ITEM FORECASTING MODELSDecision Sciences, 1981
- A simulation study of smoothing constant limits for an adaptive forecasting systemJournal of Operations Management, 1980
- Specification AnalysisJournal of the American Statistical Association, 1973
- Specification AnalysisJournal of the American Statistical Association, 1973
- DETECTION OF TURNING POINTS IN A TIME SERIESDecision Sciences, 1971
- SELF ADAPTIVE FORECASTING RECONSIDEREDDecision Sciences, 1971
- A comparative study of demand forecasting techniques for military helicopter spare partsNaval Research Logistics Quarterly, 1970
- Optimal Properties of Exponentially Weighted ForecastsJournal of the American Statistical Association, 1960