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arxiv: 2009.06382 · v2 · pith:LMGQCQF5new · submitted 2020-09-14 · 💻 cs.CV

P-DIFF: Learning Classifier with Noisy Labels based on Probability Difference Distributions

classification 💻 cs.CV
keywords labelsnoisyp-diffprobabilitytrainingsampleclassifierdifference
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Learning deep neural network (DNN) classifier with noisy labels is a challenging task because the DNN can easily over-fit on these noisy labels due to its high capability. In this paper, we present a very simple but effective training paradigm called P-DIFF, which can train DNN classifiers but obviously alleviate the adverse impact of noisy labels. Our proposed probability difference distribution implicitly reflects the probability of a training sample to be clean, then this probability is employed to re-weight the corresponding sample during the training process. P-DIFF can also achieve good performance even without prior knowledge on the noise rate of training samples. Experiments on benchmark datasets also demonstrate that P-DIFF is superior to the state-of-the-art sample selection methods.

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