Estimating demand uncertainty using judgmental forecasts

Estimating demand uncertainty using judgmental forecasts

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Article ID: iaor200937835
Country: United States
Volume: 9
Issue: 4
Start Page Number: 480
End Page Number: 491
Publication Date: Sep 2007
Journal: Manufacturing & Service Operations Management
Authors: , , ,
Keywords: supply & supply chains
Abstract:

Measuring demand uncertainty is a key activity in supply chain planning, but it is difficult when demand history is unavailable, such as for new products. One method that can be applied in such cases uses dispersion among forecasting experts as a measure of demand uncertainty. This paper provides a test for this method and presents a heteroscedastic regression model for estimating the variance of demand using dispersion among experts' forecasts and scale. We test this methodology using three data sets: demand data at item level, sales data at firm level for retailers, and sales data at firm level for manufacturers. We show that the variance of a random variable (demand and sales for our data sets) is positively correlated with both dispersion among experts' forecasts and scale: The variance increases sublinearly with dispersion and more than linearly with scale. Further, we use longitudinal data sets with sales forecasts made three to nine months before the earnings report date for retailers and manufacturers to show that the effects of dispersion and scale on variance of forecast error are consistent over time.

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