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Data-driven adaptive demand classification: Integrating prediction performance and threshold expansion

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dc.title Data-driven adaptive demand classification: Integrating prediction performance and threshold expansion en
dc.contributor.author Mirshahi, Sina
dc.contributor.author Falatouri, Taha Nejad
dc.contributor.author Brandtner, Patrick
dc.contributor.author Nasseri, Mehran
dc.contributor.author Darbanian, Farzaneh
dc.contributor.author Komínková Oplatková, Zuzana
dc.identifier.isbn 979-8-3315-3562-9
dc.date.issued 2025
dc.event.title 2nd International Conference on Artificial Intelligence, Computer, Data Sciences, and Applications, ACDSA 2025
dc.event.location Antalya
utb.event.state-en Turkey
utb.event.state-cs Turecko
dc.event.sdate 2025-08-07
dc.event.edate 2025-08-09
dc.type conferenceObject
dc.language.iso en
dc.publisher Institute of Electrical and Electronics Engineers Inc.
dc.identifier.doi 10.1109/ACDSA65407.2025.11166506
dc.relation.uri https://ieeexplore.ieee.org/document/11166506
dc.relation.uri https://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=11166506
dc.subject demand classification en
dc.subject dynamic threshold en
dc.subject intermittent demand en
dc.subject inventory management en
dc.description.abstract Demand classification is essential for improving forecasting and inventory management, particularly for products with intermittent and irregular demand patterns. However, traditional methods based on fixed thresholds, such as Average Demand Interval (ADI) and squared Coefficient of Variation (CV2), often struggle with borderline cases and typically ignore company-or industry-specific characteristics. As a result, they provide classifications that may work for average or standard environments but fail to capture the nuances of different operational contexts. This work presents an innovative, data-driven, adaptive approach that dynamically refines classification thresholds using prediction performance as a guiding metric. By optimizing the balance between forecast accuracy and material coverage, our method extends smooth demand classification to a broader range of items while keeping forecasting errors within acceptable limits. Validated on a large-scale warehouse dataset, the approach supports more responsive and resilient supply chain operations. These results demonstrate how adaptive classification mechanisms can enhance operational decision-making and advance the integration of predictive analytics into information systems for inventory optimization. en
utb.faculty Faculty of Applied Informatics
dc.identifier.uri http://hdl.handle.net/10563/1012689
utb.identifier.scopus 2-s2.0-105018469653
utb.source d-scopus
dc.date.accessioned 2026-02-17T12:10:03Z
dc.date.available 2026-02-17T12:10:03Z
dc.description.sponsorship This research was funded by the Christian Doppler Research Association as part of the Josef Ressel Centre for Predictive Value Network Intelligence (JRC PREVAIL).
utb.ou Department of Informatics and Artificial Intelligence
utb.contributor.internalauthor Mirshahi, Sina
utb.contributor.internalauthor Komínková Oplatková, Zuzana
utb.fulltext.sponsorship This research was funded by the Christian Doppler Research Association as part of the Josef Ressel Centre for Predictive Value Network Intelligence (JRC PREVAIL).
utb.scopus.affiliation Department of Logistics, University of Applied Sciences Upper Austria, School of Management, Steyr, Austria; Josef Ressel-Centre for Predictive Value Network Intelligence, Steyr, Austria; Department of Informatics and Artificial Intelligence, Tomas Bata University in Zlin, Zlin, Czech Republic; Josef Ressel-Centre for Predictive Value Network, Austria
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