Understanding and Utilizing Deep Neural Networks Trained with Noisy Labels

13 May 2019  ·  Pengfei Chen, Benben Liao, Guangyong Chen, Shengyu Zhang ·

Noisy labels are ubiquitous in real-world datasets, which poses a challenge for robustly training deep neural networks (DNNs) as DNNs usually have the high capacity to memorize the noisy labels. In this paper, we find that the test accuracy can be quantitatively characterized in terms of the noise ratio in datasets. In particular, the test accuracy is a quadratic function of the noise ratio in the case of symmetric noise, which explains the experimental findings previously published. Based on our analysis, we apply cross-validation to randomly split noisy datasets, which identifies most samples that have correct labels. Then we adopt the Co-teaching strategy which takes full advantage of the identified samples to train DNNs robustly against noisy labels. Compared with extensive state-of-the-art methods, our strategy consistently improves the generalization performance of DNNs under both synthetic and real-world training noise.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Image Classification mini WebVision 1.0 Iterative-CV (Inception-ResNet-v2) Top-1 Accuracy 65.2 # 37
Top-5 Accuracy 85.3 # 28
ImageNet Top-1 Accuracy 61.6 # 33
ImageNet Top-5 Accuracy 85.0 # 29

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