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Collaborative Optimization of Multiclass Imbalanced Learning: Density-Aware and Region-Guided Boosting

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Numerous studies attempt to mitigate classification bias caused by class imbalance. However, existing studies have yet to explore the collaborative optimization of imbalanced learning and model training. This constraint hinders further performance improvements. To bridge this gap, this study proposes a collaborative optimization Boosting model of multiclass imbalanced learning. This model is simple but effective by integrating the density factor and the confidence factor, this study designs a noise-resistant weight update mechanism and a dynamic sampling strategy. Rather than functioning as independent components, these modules are tightly integrated to orchestrate weight updates, sample region partitioning, and region-guided sampling. Thus, this study achieves the collaborative optimization of imbalanced learning and model training. Extensive experiments on 20 public imbalanced datasets demonstrate that the proposed model significantly outperforms eight state-of-the-art baselines. The code for the proposed model is available at: https://github.com/ChuantaoLi/DARG.

Chuantao Li, Zhi Li, Jiahao Xu, Jie Li, Sheng Li• 2025

Related benchmarks

TaskDatasetResultRank
Imbalanced Multiclass Classification20 imbalanced datasets aggregated
Accuracy Avg Rank1.62
9
Multiclass Classificationautomobile
Weighted F193.7
9
Multiclass ClassificationCAR
Weighted F1-score99.1
9
Multiclass ClassificationGlass
Weighted F10.808
9
Multiclass ClassificationHaberman
Weighted F1-score75
9
Multiclass Classificationnewthyroid
Weighted F1100
9
Multiclass ClassificationPageblocks
Weighted F1-score98.1
9
Multiclass Classificationvehicle
Weighted F1-score81
9
Multiclass Imbalanced Classificationautomobile
G-Mean0.91
9
Multiclass Imbalanced ClassificationCAR
G-Mean0.992
9
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