Evolving hybrid deep neural network models for end-to-end inventory ordering decisions
| Year of publication: |
2023
|
|---|---|
| Authors: | Moraes, Thais de Castro ; Qin, Jiancheng ; Yuan, Xue-ming ; Chew, Ek Peng |
| Published in: |
Logistics. - Basel : MDPI AG, ISSN 2305-6290, ZDB-ID 2908937-2. - Vol. 7.2023, 4, Art.-No. 79, p. 1-18
|
| Subject: | CNN-LSTM | deep learning | end-to-end approaches | evolving algorithms | inventory optimization | newsvendor problem | Lagerhaltungsmodell | Inventory model | Neuronale Netze | Neural networks | Algorithmus | Algorithm | Theorie | Theory | Lagermanagement | Warehouse management | Lieferkette | Supply chain | Künstliche Intelligenz | Artificial intelligence |
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