Article ID: | iaor1992758 |
Country: | United Kingdom |
Volume: | 10 |
Issue: | 6 |
Start Page Number: | 579 |
End Page Number: | 595 |
Publication Date: | Nov 1991 |
Journal: | International Journal of Forecasting |
Authors: | Wu L.S.-Y., Ravishanker N., Hosking J.R.M. |
Keywords: | planning |
This is a case study of a closely managed product. Its purpose is to determine whether time-series methods can be appropriate for business planning. By appropriate, the authors mean two things: whether these methods can model and estimate the special events or features that are often present in sales data; and whether they can forecast accurately enough one, two and four quarters ahead to be useful for business planning. They use two time-series methods, Box-Jenkins modeling and Holt-Winters adaptive forecasting to obtain forecasts of shipments of a closely managed product. The authors show how Box-Jenkins transfer-function models can account for the special events in the data. They develop criteria for choosing a final model which differ from the usual methods and are specifically directed towards maximizing the accuracy of next-quarter, next-half-year and next-full-year forecasts. The authors find that the best Box-Jenkins models give forecasts which are clearly better than those obtained from Holt-Winters forecast functions, and are also better than the judgmental forecasts of IBM’s own planners. In conclusion, they judge that Box-Jenkins models can be appropriate for business planning, in particular for determining at the end of the year baseline business-as-usual annual and monthly forecasts for the next year, and in mid-year for resetting the remaining monthly forecasts.