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Jaehyung Kim Jongheon Jeong Jinwoo Shin

Abstract
In most real-world scenarios, labeled training datasets are highly class-imbalanced, where deep neural networks suffer from generalizing to a balanced testing criterion. In this paper, we explore a novel yet simple way to alleviate this issue by augmenting less-frequent classes via translating samples (e.g., images) from more-frequent classes. This simple approach enables a classifier to learn more generalizable features of minority classes, by transferring and leveraging the diversity of the majority information. Our experimental results on a variety of class-imbalanced datasets show that the proposed method improves the generalization on minority classes significantly compared to other existing re-sampling or re-weighting methods. The performance of our method even surpasses those of previous state-of-the-art methods for the imbalanced classification.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| long-tail-learning-on-cifar-10-lt-r-10 | M2m | Error Rate: 12.5 |
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