Sebastián Maldonado
Carla Vairetti
Publicaciones 2021
Paper
FW-SMOTE: a feature-weighted oversampling approach for imbalanced classification.
The Synthetic Minority Over-sampling Technique (SMOTE) is a well-known resampling strategy that has been successfully used for dealing with the class-imbalance problem, one of the most challenging pattern recognition tasks in the last two decades.(…)
Fuente: 2021 – Pattern Recognition. In press.
Maldonado, S.
Vairetti, C.,
A. Fernandez,
F. Herrera.
Paper
Telecom traffic pumping analytics via explainable data science.
The Synthetic Minority Over-sampling Technique (SMOTE) is a well-known resampling strategy that has been successfully used for dealing with the class-imbalance problem, one of the most challenging pattern recognition tasks in the last two decades.(…)
Fuente: 2021 – Decision Support Systems 150, 113559; special issue on interpretable data science for decision making.
Irarrázaval, E.
Maldonado, S.,
Pérez, J.,
Vairetti, C.
Paper
A Transparency Maturity Model for Government Software Tenders.
The Synthetic Minority Over-sampling Technique (SMOTE) is a well-known resampling strategy that has been successfully used for dealing with the class-imbalance problem, one of the most challenging pattern recognition tasks in the last two decades.(…)
Fuente: 2021 – IEEE Access 9, 45668 – 45682.
Hochstetter, J.,
Vairetti, C.,
Cares, C.,
García, M.,
Maldonado, S.
Paper
The Synthetic Minority Over-sampling Technique (SMOTE) is a well-known resampling strategy that has been successfully used for dealing with the class-imbalance problem, one of the most challenging pattern recognition tasks in the last two decades.(…)
Fuente: 2021 – Information Sciences 559, 97-110.
Maldonado, S.,
López, J.,
Vairetti, C.
Paper
The Synthetic Minority Over-sampling Technique (SMOTE) is a well-known resampling strategy that has been successfully used for dealing with the class-imbalance problem, one of the most challenging pattern recognition tasks in the last two decades.(…)
Fuente: 2021 – Intelligent Data Analysis 25, 509–525.
García, M.,
Maldonado, S.
Vairetti, C.
Publicaciones 2020
Paper
The Synthetic Minority Over-sampling Technique (SMOTE) is a well-known resampling strategy that has been successfully used for dealing with the class-imbalance problem, one of the most challenging pattern recognition tasks in the last two decades.(…)
Fuente: 2021 – European Journal of Operational Research 284(1), 273-284.
Maldonado, S.,
López, J.,
C. Vairetti.
Paper
The Synthetic Minority Over-sampling Technique (SMOTE) is a well-known resampling strategy that has been successfully used for dealing with the class-imbalance problem, one of the most challenging pattern recognition tasks in the last two decades.(…)
Fuente: 2021 – Future Generation Computer Systems 102, 838-846.
C. Vairetti,
E. Martínez,
S. Maldonado,
F. Herrera,
M.V. Luzón.
Publicaciones 2019
Paper
The Synthetic Minority Over-sampling Technique (SMOTE) is a well-known resampling strategy that has been successfully used for dealing with the class-imbalance problem, one of the most challenging pattern recognition tasks in the last two decades.(…)
Fuente: 2021 – Transportation Research Part A: Policy and Practice 130, 333-350.
Vairetti, C.,
R. González-Ramírez,
S. Maldonado,
C. Álvarez,
S. Voss.