Back to Search Start Over

Automatic Interpretable Retail forecasting with promotional scenarios

Authors :
Ragıp Gürlek
Özden Gür Ali
Ali, Özden Gür (ORCID 0000-0002-9409-4532 & YÖK ID 57780)
Gürlek Ragıp
Graduate School of Business
Department of Business Administration
Gürlek, Ragıp
College of Administrative Sciences and Economics
Source :
International Journal of Forecasting
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

Budgeting and planning processes require medium-term sales forecasts with marketing scenarios. The complexity in modern retailing necessitates consistent, automatic forecasting and insight generation. Remedies to the high dimensionality problem have drawbacks; black box machine learning methods require voluminous data and lack insights, while regularization may bias causal estimates in interpretable models. The proposed FAIR (Fully Automatic Interpretable Retail forecasting) method supports the retail planning process with multi-step-ahead category-store level forecasts, scenario evaluations, and insights. It considers category-store specific seasonality, focal- and cross-category marketing, and adaptive base sales while dealing with regularization-induced confounding. We show, with three chains from the IRI dataset involving 30 categories, that regularization-induced confounding decreases forecast accuracy. By including focal- and cross-category marketing, as well as random disturbances, forecast accuracy is increased. FAIR is more accurate than the black box machine learning method Boosted Trees and other benchmarks while also providing insights that are in line with the marketing literature.<br />NA

Details

ISSN :
01692070
Volume :
36
Database :
OpenAIRE
Journal :
International Journal of Forecasting
Accession number :
edsair.doi.dedup.....b869b4488ff7f7df492ab6d42996966a
Full Text :
https://doi.org/10.1016/j.ijforecast.2020.02.003