SELC: Self-Ensemble Label Correction Improves Learning with Noisy Labels
- URL: http://arxiv.org/abs/2205.01156v1
- Date: Mon, 2 May 2022 18:42:47 GMT
- Title: SELC: Self-Ensemble Label Correction Improves Learning with Noisy Labels
- Authors: Yangdi Lu, Wenbo He
- Abstract summary: Deep neural networks are prone to overfitting noisy labels, resulting in poor generalization performance.
We present a method self-ensemble label correction (SELC) to progressively correct noisy labels and refine the model.
SELC obtains more promising and stable results in the presence of class-conditional, instance-dependent, and real-world label noise.
- Score: 4.876988315151037
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep neural networks are prone to overfitting noisy labels, resulting in poor
generalization performance. To overcome this problem, we present a simple and
effective method self-ensemble label correction (SELC) to progressively correct
noisy labels and refine the model. We look deeper into the memorization
behavior in training with noisy labels and observe that the network outputs are
reliable in the early stage. To retain this reliable knowledge, SELC uses
ensemble predictions formed by an exponential moving average of network outputs
to update the original noisy labels. We show that training with SELC refines
the model by gradually reducing supervision from noisy labels and increasing
supervision from ensemble predictions. Despite its simplicity, compared with
many state-of-the-art methods, SELC obtains more promising and stable results
in the presence of class-conditional, instance-dependent, and real-world label
noise. The code is available at https://github.com/MacLLL/SELC.
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