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Title
Prediction of customer demand for perishable products in retail inventory management, using the hybrid prophet-XGBoost model during the post-COVID-19 period
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
Other institutions
Mondragon Unibertsitatea
Version
Preprint
Document type
Journal Article
Language
English
Rights
@ 2025 The authors, published by Taylor & Francis
Access
Open access
URI
https://hdl.handle.net/20.500.11984/14482
Publisher’s version
https://doi.org/10.1080/13504851.2024.2333995
Published at
Applied economic letters  Vol. 32, issue 17
xmlui.dri2xhtml.METS-1.0.item-publicationfirstpage
2453
xmlui.dri2xhtml.METS-1.0.item-publicationlastpage
2459
Publisher
Taylor & Francis
Keywords
Time series forecasting
Machine learning
Hybrid demand prediction model
COVID-19 ... [+]
Time series forecasting
Machine learning
Hybrid demand prediction model
COVID-19
Retailing [-]
Subject (UNESCO Thesaurus)
Green economy
Abstract
Retail inventory management (IM) presents challenges in decision-making, especially in determining optimal inventory levels for future customer demand alignment. This study focuses on predicting dairy ... [+]
Retail inventory management (IM) presents challenges in decision-making, especially in determining optimal inventory levels for future customer demand alignment. This study focuses on predicting dairy product demand by a significant European retail company using historical order data. As dairy products are perishable and constitute a relevant portion of retail trade volume, accurate IM is crucial to prevent wastage and meet customer needs. However, external factors like COVID-19 may impact demand volatility and seasonal patterns. Given the absence of scientific studies on predicting post-COVID-19 demand, our research aims to fill this gap by proposing alternatives, such as excluding the pandemic period and developing a historical imputation. The study employs two predictive models, Prophet and XGBoost, known for their superior performance in predicting demand. Moreover, a hybrid approach combining both models is proposed to enhance prediction accuracy by leveraging the capacity of the Prophet model to handle seasonal and holiday-period effects and XGBoost’s regularization to prevent overfitting. The results demonstrate the feasibility of historical imputation and the hybrid model approach, improving significantly individual model performance. The principal application of the study is to propose an approach to predict the shipment of other products in a post-COVID-19 context. [-]
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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