1. A survey on learning from imbalanced data streams: taxonomy, challenges, empirical study, and reproducible experimental framework;Aguiar,2022
2. Adapting dynamic classifier selection for concept drift;Almeida;Expert Systems with Applications,2018
3. Baena-Garcıa, M., del Campo-Ávila, J., Fidalgo, R., Bifet, A., Gavalda, R., & Morales-Bueno, R. (2006). Early drift detection method. In Fourth international workshop on knowledge discovery from data streams, vol. 6 (pp. 77–86).
4. MWMOTE–majority weighted minority oversampling technique for imbalanced data set learning;Barua;IEEE Transactions on Knowledge and Data Engineering,2012
5. VFC-SMOTE: very fast continuous synthetic minority oversampling for evolving data streams;Bernardo;Data Mining and Knowledge Discovery,2021