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Hybrid approach redefinition-multi class with resampling and feature selection for multi-class imbalance with overlapping and noise
2021
Bulletin of Electrical Engineering and Informatics
Class imbalance and overlapping on multi-class can reduce the performance and accuracy of the classification. Noise must also be considered because it can reduce the performance of classification. With a resampling algorithm and feature selection, this paper proposes a method for improving the performance of hybrid approach redefinition-multi class (HAR-MI). Resampling algorithm can overcome the problem of noise but cannot handle overlapping well. Feature selection is good at dealing with
doi:10.11591/eei.v10i3.3057
fatcat:mtoxgjxoqfbfdabrn7nchfzdny