Utilize este identificador para referenciar este registo: https://hdl.handle.net/1822/89507

TítuloCost-sensitive learning and threshold-moving approach to improve industrial lots release process on imbalanced datasets
Autor(es)Lobo, Armindo
Oliveira, Pedro
Sampaio, Paulo
Novais, Paulo
Palavras-chaveCost-sensitive learning
Imbalanced data
Lots release
Machine learning
Threshold-moving
Data2023
EditoraSpringer Nature
RevistaLecture Notes in Networks and Systems
Resumo(s)With Industry 4.0, companies must manage massive and generally imbalanced datasets. In an automotive company, the lots release decision process must cope with this problem by combining data from different sources to determine if a selected group of products can be released to the customers. This work focuses on this process and aims to classify the occurrence of customer complaints with a conception, tune and evaluation of five ML algorithms, namely XGBoost (XGB), LightGBM (LGBM), CatBoost (CatB), Random Forest(RF) and a Decision Tree (DT), based on an imbalanced dataset of automatic production tests. We used a non-sampling approach to deal with the problem of imbalanced datasets by analyzing two different methods, cost-sensitive learning and threshold-moving. Regarding the obtained results, both methods showed an effective impact on boosting algorithms, whereas RF only showed improvements with threshold-moving. Also, considering both approaches, the best overall results were achieved by the threshold-moving method, where RF obtained the best outcome with a F1-Score value of 76.2%.
TipoArtigo em ata de conferência
URIhttps://hdl.handle.net/1822/89507
ISBN978-3-031-20858-4
e-ISBN978-3-031-20859-1
DOI10.1007/978-3-031-20859-1_28
ISSN2367-3370
e-ISSN2367-3389
Versão da editorahttps://link.springer.com/chapter/10.1007/978-3-031-20859-1_28
Arbitragem científicayes
AcessoAcesso aberto
Aparece nas coleções:CAlg - Artigos em livros de atas/Papers in proceedings

Ficheiros deste registo:
Ficheiro Descrição TamanhoFormato 
Cost_sensitive_learning_and_threshold_moving_approach_to_improve_AALR_versão_final.pdf278,71 kBAdobe PDFVer/Abrir

Partilhe no FacebookPartilhe no TwitterPartilhe no DeliciousPartilhe no LinkedInPartilhe no DiggAdicionar ao Google BookmarksPartilhe no MySpacePartilhe no Orkut
Exporte no formato BibTex mendeley Exporte no formato Endnote Adicione ao seu ORCID