Authors
Özden Gür Ali, Serpil Sayın, Tom Van Woensel, Jan Fransoo
Publication date
2009/12/1
Journal
Expert Systems with Applications
Volume
36
Issue
10
Pages
12340-12348
Publisher
Pergamon
Description
Promotions and shorter life cycles make grocery sales forecasting more difficult, requiring more complicated models. We identify methods of increasing complexity and data preparation cost yielding increasing improvements in forecasting accuracy, by varying the forecasting technique, the input features and model scope on an extensive SKU-store level sales and promotion time series from a European grocery retailer. At the high end of data and technique complexity, we propose using regression trees with explicit features constructed from sales and promotion time series of the focal and related SKU-store combinations. We observe that data pooling almost always improves model performance. The results indicate that simple time series techniques perform very well for periods without promotions. However, for periods with promotions, regression trees with explicit features improve accuracy substantially. More …
Total citations
20092010201120122013201420152016201720182019202020212022202320242272117141471729293031209
Scholar articles
ÖG Ali, S Sayın, T Van Woensel, J Fransoo - Expert Systems with Applications, 2009