Publication | Open Access
MentorNet: Learning Data-Driven Curriculum for Very Deep Neural Networks on Corrupted Labels
536
Citations
26
References
2017
Year
Artificial IntelligenceStructured PredictionConvolutional Neural NetworkEngineeringMachine LearningNeural NetworkData-driven CurriculumData ScienceRecent Deep NetworksSemi-supervised LearningSupervised LearningData AugmentationMachine VisionLearning AnalyticsComputer ScienceDeep LearningKnowledge DistillationDeep NetworksData-driven LearningCorrupted Labels
Recent deep networks are capable of memorizing the entire data even when the labels are completely random. To overcome the overfitting on corrupted labels, we propose a novel technique of learning another neural network, called MentorNet, to supervise the training of the base deep networks, namely, StudentNet. During training, MentorNet provides a curriculum (sample weighting scheme) for StudentNet to focus on the sample the label of which is probably correct. Unlike the existing curriculum that is usually predefined by human experts, MentorNet learns a data-driven curriculum dynamically with StudentNet. Experimental results demonstrate that our approach can significantly improve the generalization performance of deep networks trained on corrupted training data. Notably, to the best of our knowledge, we achieve the best-published result on WebVision, a large benchmark containing 2.2 million images of real-world noisy labels. The code are at https://github.com/google/mentornet
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