Research Area:  Machine Learning
Learning nonstationary data streams has been well studied in recent years. However, most of the researches assume that the class imbalance of data streams is relatively balanced. Only a few approaches tackle the joint issue of concept drift and class imbalance due to its complexity. Meanwhile, the existing chunk ensembles for classifying imbalanced nonstationary data streams always need to store previous data, which consumes plenty of memory usage. To overcome these issues, we propose a chunk-based incremental ensemble algorithm called Dynamic Updated Ensemble (DUE) for learning imbalanced data streams with concept drift. Compared to the existing techniques, its merits are five-fold: (1) it learns one chunk at a time without requiring access to previous data; (2) it emphasizes misclassified examples in the model update procedure; (3) it can timely react to multiple kinds of concept drifts; (4) it can adapt to the new condition when switching majority class to minority class; (5) it keeps a limited number of classifiers to ensure high efficiency. Experiments on synthetic and real datasets demonstrate the effectiveness of DUE in learning nonstationary imbalanced data streams.
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Author(s) Name:  Zeng Li, Wenchao Huang, Yan Xiong Siqi Ren, Tuanfei Zhu
Journal name:  Knowledge-Based Systems
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Publisher name:  ELSEVIER
DOI:  https://doi.org/10.1016/j.knosys.2020.105694
Volume Information:  Volume 195, 11 May 2020, 105694
Paper Link:   https://www.sciencedirect.com/science/article/abs/pii/S095070512030126X