KCO: Balancing class distribution in just-in-time software defect prediction using kernel crossover oversampling
Ahmad Muhaimin Ismail,
Siti Hafizah Ab Hamid,
Asmiza Abdul Sani
et al.
Abstract:The performance of the defect prediction model by using balanced and imbalanced datasets makes a big impact on the discovery of future defects. Current resampling techniques only address the imbalanced datasets without taking into consideration redundancy and noise inherent to the imbalanced datasets. To address the imbalance issue, we propose Kernel Crossover Oversampling (KCO), an oversampling technique based on kernel analysis and crossover interpolation. Specifically, the proposed technique aims to generat… Show more
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