PSU: Particle Stacking Undersampling Method for Highly Imbalanced Big Data

Imbalanced classes are a common problem in machine learning, and the computational costs required for proper resampling increases with the data size. In this study, a simple and effective undersampling method, named particle stacking undersampling (PSU) was proposed. Compared with other competing un...

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Veröffentlicht in:IEEE access 2020, Vol.8, p.131920-131927
Hauptverfasser: Jeon, Yong-Seok, Lim, Dong-Joon
Format: Artikel
Sprache:eng
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Zusammenfassung:Imbalanced classes are a common problem in machine learning, and the computational costs required for proper resampling increases with the data size. In this study, a simple and effective undersampling method, named particle stacking undersampling (PSU) was proposed. Compared with other competing undersampling methods, PSU can significantly reduce the computational costs, while minimizing information loss to prevent a prediction bias. The performance benchmark applied on 55 binary classification problems indicated that the proposed method not only achieved an enhanced classification performance over other well-known undersampling methods (random undersampling, NearMiss-1, NearMiss-2, cluster centroid, edited nearest neighbor, condensed nearest neighbor, and Tomek Links) but also provided a computational simplicity that can be scalable to large data. Moreover, an experiment verified that two propositions forming the basis of the PSU algorithm can also be applied to other undersampling methods to achieve methodological improvements.
ISSN:2169-3536
2169-3536
DOI:10.1109/ACCESS.2020.3009753