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Management of Promotional Activity Supported by Forecasts Based on Assorted Information

Title
Management of Promotional Activity Supported by Forecasts Based on Assorted Information
Type
Article in International Conference Proceedings Book
Year
2016
Authors
Ribeiro, C
(Author)
Other
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José Manuel Oliveira
(Author)
FEP
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Patrícia Ramos
(Author)
FEUP
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Conference proceedings International
Pages: 477-482
14th International Conference on Manufacturing Research (ICMR)
Loughborough Univ, Loughborough, ENGLAND, SEP 06-08, 2016
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Authenticus ID: P-00M-3MJ
Abstract (EN): Aggressive marketing causes rapid changes in consumer behavior and some significant impact in the retail business. In this context, the sales forecasting at the SKU level can help retailers to become more competitive by reducing inventory investment and distribution costs. Sales forecasts are often obtained combining basic univariate forecasting models with empirical judgment. However, more effective forecasting methods can be obtained by incorporating promotional information, including price, percentage of discount (direct discount or loyalty card discount), calendar events and weekend indicators not only from the focal product but also from its competitors. To deal with the high dimensionality of the variable space, we propose a two-stage LASSO regression to select optimal predictors and estimate the model parameters. At the first stage, only focal SKUs promotional explanatory variables are included in the Autoregressive Distributed Lag model. At the second stage, the in-sample forecast errors from the first stage are regressed on the explanatory variables from the other SKUs in the same category with the focal SKU, and to use that information more effectively three different approaches were considered: select the five top sales SKUs, include all raw promotional information, and preprocess raw information using Principal Component Analysis. The empirical results obtained using daily data from a Portuguese retailer show that the inclusion of promotional information from SKUs in the same category may improve the forecast accuracy and that better overall forecasting results may be obtained if the best model for each SKU is selected.
Language: English
Type (Professor's evaluation): Scientific
No. of pages: 6
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