Author
Abstract
Forecasting methods are often valued by means of simulation studies. For intermittent demand items there are often very few non–zero observations, so it is hard to check any assumptions, because statistical information is often too weak to determine, for example, distribution of a variable. Therefore, it seems important to verify the forecasting methods on the basis of real data. The main aim of the article is an empirical verification of several forecasting methods applicable in case of intermittent demand. Some items are sold only in specific subperiods (in given month in each year, for example), but most forecasting methods (such as Croston's method) give non–zero forecasts for all periods. For example, summer work clothes should have non–zero forecasts only for summer months and many methods will usually provide non–zero forecasts for all months under consideration. This was the motivation for proposing and testing a new forecasting technique which can be applicable to seasonal items. In the article six methods were applied to construct separate forecasting systems: Croston's, SBA (Syntetos–Boylan Approximation), TSB (Teunter, Syntetos, Babai), MA (Moving Average), SES (Simple Exponential Smoothing) and SESAP (Simple Exponential Smoothing for Analogous subPeriods). The latter method (SESAP) is an author's proposal dedicated for companies facing the problem of seasonal items. By analogous subperiods the same subperiods in each year are understood, for example, the same months in each year. A data set from the real company was used to apply all the above forecasting procedures. That data set contained monthly time series for about nine thousand products. The forecasts accuracy was tested by means of both parametric and non–parametric measures. The scaled mean and the scaled root mean squared error were used to check biasedness and efficiency. Also, the mean absolute scaled error and the shares of best forecasts were estimated. The general conclusion is that in the analyzed company a forecasting system should be based on two forecasting methods: TSB and SESAP, but the latter method should be applied only to seasonal items (products sold only in specific subperiods). It also turned out that Croston's and SBA methods work worse than much simpler methods, such as SES or MA. The presented analysis might be helpful for enterprises facing the problem of forecasting intermittent items (and seasonal intermittent items as well).
Suggested Citation
Mariusz Doszyń, 2019.
"Intermittent demand forecasting in the Enterprise: Empirical verification,"
Journal of Forecasting, John Wiley & Sons, Ltd., vol. 38(5), pages 459-469, August.
Handle:
RePEc:wly:jforec:v:38:y:2019:i:5:p:459-469
DOI: 10.1002/for.2575
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Cited by:
- Prak, Dennis & Rogetzer, Patricia, 2022.
"Timing intermittent demand with time-varying order-up-to levels,"
European Journal of Operational Research, Elsevier, vol. 303(3), pages 1126-1136.
- Mariusz Doszyn, 2020.
"Accuracy of Intermittent Demand Forecasting Systems in the Enterprise,"
European Research Studies Journal, European Research Studies Journal, vol. 0(4), pages 912-930.
- Mariusz Doszyn, 2020.
"Biasedness of Forecasts Errors for Intermittent Demand Data,"
European Research Studies Journal, European Research Studies Journal, vol. 0(Special 1), pages 1113-1127.
- Sebastian Gnat & Mariusz Doszyn, 2020.
"Parametric and Non-parametric Methods in Mass Appraisal on Poorly Developed Real Estate Markets,"
European Research Studies Journal, European Research Studies Journal, vol. 0(4), pages 1230-1245.
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