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Forecasting from time series subject to sporadic perturbations: Effectiveness of different types of forecasting support
De Baets, Shari ; Harvey, N.
De Baets, Shari
Harvey, N.
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Publication Type
Journal article with impact factor
Editor
Supervisor
Publication Year
2018
Journal
International Journal of Forecasting
Book
Publication Volume
34
Publication Issue
2
Publication Begin page
163
Publication End page
180
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Abstract
How effective are different approaches for the provision of forecasting support? Forecasts may be either unaided or made with the help of statistical forecasts. In practice, the latter are often crude forecasts that do not take sporadic perturbations into account. Most research considers forecasts based on series that have been cleansed of perturbation effects. This paper considers an experiment in which people made forecasts from time series that were disturbed by promotions. In all conditions, under-forecasting occurred during promotional periods and over-forecasting during normal ones. The relative sizes of these effects depended on the proportions of periods in the data series that contained promotions. The statistical forecasts improved the forecasting accuracy, not because they reduced these biases, but because they decreased the random error (scatter). The performance improvement did not depend on whether the forecasts were based on cleansed series. Thus, the effort invested in producing cleansed time series from which to forecast may not be warranted: companies may benefit from giving their forecasters even crude statistical forecasts. In a second experiment, forecasters received optimal statistical forecasts that took the effects of promotions into account fully. This increased the accuracy because the biases were almost eliminated and the random error was reduced by 20%. Thus, the additional effort required to produce forecasts that take promotional effects into account is worthwhile.
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Keywords
People Management & Leadership, Forecasting