AI RESEARCH
Close to Reality: Interpretable and Feasible Data Augmentation for Imbalanced Learning
arXiv CS.LG
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ArXi:2603.13927v1 Announce Type: new Many machine learning classification tasks involve imbalanced datasets, which are often subject to over-sampling techniques aimed at improving model performance. However, these techniques are prone to generating unrealistic or infeasible samples. Furthermore, they often function as black boxes, lacking interpretability in their procedures. This opacity makes it difficult to track their effectiveness and provide necessary adjustments, and they may ultimately fail to yield significant performance improvements. To bridge this gap, we