The conditions under which forecasts from expert judgement outperform traditional quantitative methods are investigated. It is shown that judgement is better than quantitative techniques at estimating the magnitude, onset, and duration of temporary change. On the other hand, quantitative methods provide superior performance during periods of no change, or constancy, in the data pattern. These propositions were tested on a sample of real business time series. To demonstrate how these propositions might be implemented, and to assess the potential value of doing so, a simple rule is tested on when to switch from quantitative to judgemental forecasts. The results show that it significantly reduces forecast error. These findings provide operations managers with some guidelines as to when (and when not) they should intervene in the forecasting process.
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1 June 1991
Research Article|
June 01 1991
On Knowing When to Switch from Quantitative to Judgemental Forecasts Available to Purchase
Nada R. Sanders;
Nada R. Sanders
Wright State University, USA
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Larry P. Ritzman
Larry P. Ritzman
Boston College, USA
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Publisher: Emerald Publishing
Online ISSN: 1758-6593
Print ISSN: 0144-3577
© MCB UP Limited
1991
International Journal of Operations & Production Management (1991) 11 (6): 27–37.
Citation
Sanders NR, Ritzman LP (1991), "On Knowing When to Switch from Quantitative to Judgemental Forecasts". International Journal of Operations & Production Management, Vol. 11 No. 6 pp. 27–37, doi: https://doi.org/10.1108/01443579110005523
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