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dc.creatorNtakolia C., Kokkotis C., Karlsson P., Moustakidis S.en
dc.date.accessioned2023-01-31T09:40:43Z
dc.date.available2023-01-31T09:40:43Z
dc.date.issued2021
dc.identifier10.3390/s21237926
dc.identifier.issn14248220
dc.identifier.urihttp://hdl.handle.net/11615/77312
dc.description.abstractGlobal competition among businesses imposes a more effective and low-cost supply chain allowing firms to provide products at a desired quality, quantity, and time, with lower production costs. The latter include holding cost, ordering cost, and backorder cost. Backorder occurs when a product is temporarily unavailable or out of stock and the customer places an order for future production and shipment. Therefore, stock unavailability and prolonged delays in product delivery will lead to additional production costs and unsatisfied customers, respectively. Thus, it is of high importance to develop models that will effectively predict the backorder rate in an inventory system with the aim of improving the effectiveness of the supply chain and, consequentially, the performance of the company. However, traditional approaches in the literature are based on stochastic approximation, without incorporating information from historical data. To this end, machine learning models should be employed for extracting knowledge of large historical data to develop predictive models. Therefore, to cover this need, in this study, the backorder prediction problem was addressed. Specifically, various machine learning models were compared for solving the binary classification problem of backorder prediction, followed by model calibration and a post-hoc explainability based on the SHAP model to identify and interpret the most important features that contribute to material backorder. The results showed that the RF, XGB, LGBM, and BB models reached an AUC score of 0.95, while the best-performing model was the LGBM model after calibration with the Isotonic Regression method. The explainability analysis showed that the inventory stock of a product, the volume of products that can be delivered, the imminent demand (sales), and the accurate prediction of the future demand can significantly contribute to the correct prediction of backorders. © 2021 by the authors. Licensee MDPI, Basel, Switzerland.en
dc.language.isoenen
dc.sourceSensorsen
dc.source.urihttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85119934595&doi=10.3390%2fs21237926&partnerID=40&md5=db57989cff9aa7d4e8a11238f299c1b5
dc.subjectCompetitionen
dc.subjectCostsen
dc.subjectInventory controlen
dc.subjectMachine learningen
dc.subjectRegression analysisen
dc.subjectSalesen
dc.subjectStochastic systemsen
dc.subjectSupply chainsen
dc.subjectBackordersen
dc.subjectCost supplyen
dc.subjectGlobal competitionen
dc.subjectHistorical dataen
dc.subjectInventory backorder predictionen
dc.subjectInventory managementen
dc.subjectLow-costsen
dc.subjectMachine learning modelsen
dc.subjectPost-hoc explainabilityen
dc.subjectPrediction modellingen
dc.subjectForecastingen
dc.subjectmachine learningen
dc.subjectMachine Learningen
dc.subjectMDPIen
dc.titleAn explainable machine learning model for material backorder prediction in inventory managementen
dc.typejournalArticleen


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