A stacking ensemble model for food demand forecasting: A preventative approach to food waste reduction

Building effective demand forecasting is crucial for better planning and ensuring sustainability within food supply chain systems. The food industry has received the least attention for building demand forecasting approaches, with a noticeable lack of utilizing ensemble stacking models. Additionally...

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Main Authors: Asmaa Seyam, Sujith Samuel Mathew, Bo Du, May El Barachi, Jun Shen
Format: Article
Language:English
Published: Elsevier 2025-06-01
Series:Cleaner Logistics and Supply Chain
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Online Access:http://www.sciencedirect.com/science/article/pii/S2772390925000241
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author Asmaa Seyam
Sujith Samuel Mathew
Bo Du
May El Barachi
Jun Shen
author_facet Asmaa Seyam
Sujith Samuel Mathew
Bo Du
May El Barachi
Jun Shen
author_sort Asmaa Seyam
collection DOAJ
description Building effective demand forecasting is crucial for better planning and ensuring sustainability within food supply chain systems. The food industry has received the least attention for building demand forecasting approaches, with a noticeable lack of utilizing ensemble stacking models. Additionally, while some models have achieved accurate predictions, they do not consider freshness variables and are not assessed for their impact on waste reduction. This paper develops a demand forecasting framework that is considered as a preventative approach to reduce food waste by enabling food retailers to better manage inventory and balance supply with demand. The paper first develops an ensemble stacking model combining the random forest, support vector regression, eXtreme gradient boosting, long short-term memory models as base learners and Ridge regression as a meta-learner. The performance accuracy of the proposed model is assessed by benchmarking with singular models using various metrics. The experimental results reveal that the proposed stacking model outperforms random forest and eXtreme gradient boosting while consistently outperforming support vector regression and long short-term memory model, achieving a coefficient of determination score of 0.99, mean absolute error of 0.63, mean absolute percentage error of 1.8, and prediction accuracy of 98.2%. The model’s performance is further assessed on its impact on waste reduction by utilizing the predicted demand to replenish the inventory for the next day dynamically. The promising results indicate that relying on the predicted demand to replenish the inventory achieves a significant reduction in food waste.
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spelling doaj-art-c7f4b403c67442c0b2bce1bcaafe43342025-08-20T03:21:16ZengElsevierCleaner Logistics and Supply Chain2772-39092025-06-011510022510.1016/j.clscn.2025.100225A stacking ensemble model for food demand forecasting: A preventative approach to food waste reductionAsmaa Seyam0Sujith Samuel Mathew1Bo Du2May El Barachi3Jun Shen4School of Computing and Information Technology, University of Wollongong, Wollongong, NSW, AustraliaCollege of Interdisciplinary Studies, Zayed University, Dubai, United Arab EmiratesDepartment of Management, Griffith University, Brisbane, QLD, AustraliaFaculty of Engineering and Information Sciences, The University of Wollongong in Dubai, Dubai, United Arab EmiratesSchool of Computing and Information Technology, University of Wollongong, Wollongong, NSW, Australia; Corresponding author.Building effective demand forecasting is crucial for better planning and ensuring sustainability within food supply chain systems. The food industry has received the least attention for building demand forecasting approaches, with a noticeable lack of utilizing ensemble stacking models. Additionally, while some models have achieved accurate predictions, they do not consider freshness variables and are not assessed for their impact on waste reduction. This paper develops a demand forecasting framework that is considered as a preventative approach to reduce food waste by enabling food retailers to better manage inventory and balance supply with demand. The paper first develops an ensemble stacking model combining the random forest, support vector regression, eXtreme gradient boosting, long short-term memory models as base learners and Ridge regression as a meta-learner. The performance accuracy of the proposed model is assessed by benchmarking with singular models using various metrics. The experimental results reveal that the proposed stacking model outperforms random forest and eXtreme gradient boosting while consistently outperforming support vector regression and long short-term memory model, achieving a coefficient of determination score of 0.99, mean absolute error of 0.63, mean absolute percentage error of 1.8, and prediction accuracy of 98.2%. The model’s performance is further assessed on its impact on waste reduction by utilizing the predicted demand to replenish the inventory for the next day dynamically. The promising results indicate that relying on the predicted demand to replenish the inventory achieves a significant reduction in food waste.http://www.sciencedirect.com/science/article/pii/S2772390925000241Food wasteDemand forecastMachine learningStacking modelSustainabilityFood retailer
spellingShingle Asmaa Seyam
Sujith Samuel Mathew
Bo Du
May El Barachi
Jun Shen
A stacking ensemble model for food demand forecasting: A preventative approach to food waste reduction
Cleaner Logistics and Supply Chain
Food waste
Demand forecast
Machine learning
Stacking model
Sustainability
Food retailer
title A stacking ensemble model for food demand forecasting: A preventative approach to food waste reduction
title_full A stacking ensemble model for food demand forecasting: A preventative approach to food waste reduction
title_fullStr A stacking ensemble model for food demand forecasting: A preventative approach to food waste reduction
title_full_unstemmed A stacking ensemble model for food demand forecasting: A preventative approach to food waste reduction
title_short A stacking ensemble model for food demand forecasting: A preventative approach to food waste reduction
title_sort stacking ensemble model for food demand forecasting a preventative approach to food waste reduction
topic Food waste
Demand forecast
Machine learning
Stacking model
Sustainability
Food retailer
url http://www.sciencedirect.com/science/article/pii/S2772390925000241
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