Evaluating early predictive performance of machine learning approaches for engineering change schedule : a case study using predictive process monitoring techniques
Year of publication: |
2024
|
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Authors: | Radišić-Aberger, Ognjen ; Burggräf, Peter ; Steinberg, Fabian ; Becher, Alexander ; Weißer, Tim |
Published in: |
Supply chain analytics. - [Amsterdam] : Elsevier, ISSN 2949-8635, ZDB-ID 3180833-5. - Vol. 8.2024, Art.-No. 100087, p. 1-35
|
Subject: | Earliness | Effectivity Date | Engineering Change | Machine Learning | Predictive Process Monitoring | Künstliche Intelligenz | Artificial intelligence | Prognoseverfahren | Forecasting model | Prozessmanagement | Business process management | Algorithmus | Algorithm | Scheduling-Verfahren | Scheduling problem |
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