Authors
Sena Nur Yıldız, Feyza Yıldırım Okay, Abulkhair Islamov, Suat Özdemir
Publication date
2024/1/1
Journal
Procedia Computer Science
Volume
231
Pages
697-702
Publisher
Elsevier
Description
In the rapidly evolving industrial landscape, Artificial Intelligence (AI) has emerged as a transformative force in various sectors, including manufacturing and supply chain management. Meanwhile, packaging planning is another area that is still open to AI development. Effective packaging planning is a complicated task to be handled carefully throughout the entire planning process. To solve this problem, we propose an improved heterogeneous chain-based multi-output classification model for predicting the dimensions and types of packages for each shipment. While conventional chain regression models typically employ only a single base classifier within each chain, our improved model allows for flexibility in the utilization of different classifiers within a chain structure. Our improved model is analyzed on a real-world dataset by employing different multi-output classification algorithms, including Random Forest (RF …
Scholar articles
SN Yıldız, FY Okay, A Islamov, S Özdemir - Procedia Computer Science, 2024