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lovedlim avatar lovedlim commented on July 28, 2024

안녕하세요:) 말씀하신 것처럼 불균형이 심할 때 일반적으로 SMOTE, GAN, 언더/오버샘플링 기법등이 있습니다. 하지만 실제 적용했을 때 효과가 있을지는 해봐야 알 것 같아요! 또한 딥러닝에서는 weight balancing 값을 줄 수 있습니다. weight balancing 을 통해서 (데이터가 작은)특정 클래스에 대해 loss값을 크게 만들 수 있어요!
참고 자료: 텐서플로 튜토리얼 "클래스 가중치로 모델 교육" 부분 참고하세요!
https://www.tensorflow.org/tutorials/structured_data/imbalanced_data?hl=ko

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