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How Does Data Augmentation Affect to Model Performance in Long-Tailed Classification?

Năm XB 2024 Tạp chí / Hội thảo Lecture Notes in Networks and Systems Volume 882 LNNS DOI / Link https://doi.org/10.1007/978-3-031-74127-2_28 ↗

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Tóm tắt

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...

Tài liệu tham khảo

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