Please use this identifier to cite or link to this item:
https://elib.vku.udn.vn/handle/123456789/4291
Title: | How Does Data Augmentation Affect to Model Performance in Long-Tailed Classification? |
Authors: | Vu, Quang Duc Trinh, Van Ha Dang, An Phung, Thi Thu Trang Ha, Minh Tan |
Keywords: | Data Augmentation Affect to Model Performance in Long-Tailed Classification? Data augmentation intuitively increases the imbalance ratio between majority classes and minority classes Models on recognition systems and embedded devices |
Issue Date: | Nov-2024 |
Publisher: | Springer Nature |
Abstract: | Long-tailed classification is one of the biggest issues in the real-world, because severe data imbalances often lead to less accurate forecasts in the minority. This seriously affects deploying prediction models on recognition systems and embedded devices. Most recently methods have focused on improving the model’s performance by proposing new rebalance strategies, using more networks, transfer learning, etc. In this paper, we investigate the impact of data augmentation for long-tailed classification via two proposed cases including data augmentation for all classes and data augmentation only for minority classes. Data augmentation intuitively increases the imbalance ratio between majority classes and minority classes. This may directly affect the model’s performance. However, the experiment results in case 1 have shown the opposite, we found that with more data at tailed classes, the model can learn better and achieve higher despite the imbalance ratio increase. In addition, it serves as an updated version of case 1 to overcome its limitations. The results have depicted that our approach achieves state-of-the-art performance on long-tailed classification. |
Description: | Lecture Notes in Networks and Systems (LNNS,volume 882); The 13th Conference on Information Technology and Its Applications (CITA 2024) ; pp: 337-347. |
URI: | https://elib.vku.udn.vn/handle/123456789/4291 https://doi.org/10.1007/978-3-031-74127-2_28 |
ISBN: | 978-3-031-74126-5 |
Appears in Collections: | CITA 2024 (International) |
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