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Title
Reducing product waste within the retail industry: a post-COVID-19 era study on enchancing demand prediction with hybrid prediction models
Author
Elorza, MaiderORCID
Segura Querol, Sara
Castellano, EduardoORCID
xmlui.dri2xhtml.METS-1.0.item-contributorDepartment
Business Data Anaytics
Research Group
Transformación y optimización del negocio
Version
Preprint
Document type
Journal Article
Language
English
Rights
© 2026 The Authors. Published by Taylor & Francis
Access
Open access
URI
https://hdl.handle.net/20.500.11984/14481
Publisher’s version
https://doi.org/10.1080/00036846.2025.2452538
Published at
Applied Economics  Vol. 58, issue 2
xmlui.dri2xhtml.METS-1.0.item-publicationfirstpage
332
xmlui.dri2xhtml.METS-1.0.item-publicationlastpage
347
Publisher
Taylor & Francis
Keywords
Machine learning
hybrid demand prediction model
Forecasting
food waste ... [+]
Machine learning
hybrid demand prediction model
Forecasting
food waste
Product waste
Retail analytics [-]
Subject (UNESCO Thesaurus)
Green economy
Abstract
The retail sector faces growing challenges, particularly aligning with the European Union’s sustainable policies to minimize waste. This paper proposes a framework to address two pivotal goals: i) Int ... [+]
The retail sector faces growing challenges, particularly aligning with the European Union’s sustainable policies to minimize waste. This paper proposes a framework to address two pivotal goals: i) Introducing cutting-edge machine learning models to forecast demand within the context of a post-COVID environment. ii) Evaluating the benefits of integrating these predictive into operational strategies by measuring the reduction in overstock levels compared to traditional business practices. The hybrid Prophet-XGBoost model consistently outperformed classical and other hybridization models in terms of accuracy (lowest MAPE and WAPE), when predicting demand. This study uses data from 2019 to 2023 but excludes 2020 and 2021 due to the disruptions caused by COVID-19. Our findings reveal that relying solely on recent data from 2022 to 2023 results in lower model accuracy compared to historical imputation methods. Notably, substituting 2019 values for 2021 outperforms interpolating with data from 2022. Beyond its methodological advancements, this research introduces a novel approach to quantifying overstock reduction, contributing to both academic literature and retail practice. In this case, we observed a significant overstock issue with non-food products, likely tied to agreements between retailers and suppliers. As these products are non-perishable, retailers appear to have been less cautious in managing stock levels. [-]
Funder
Gobierno Vasco
Program
Bikaintek 2019 for the completion of industrial doctorates and for the incorporation of research personnel
Number
20AFW2201900003
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  • Articles - Economy and business [52]

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