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Combating Noisy Labels by Agreement: A Joint Training Method with Co-Regularization

机译:通过协议打击嘈杂的标签:具有共同规律性的联合培训方法

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Deep Learning with noisy labels is a practically challenging problem in weakly-supervised learning. The state-of-the-art approaches "Decoupling" and "Co-teaching+" claim that the "disagreement" strategy is crucial for alleviating the problem of learning with noisy labels. In this paper, we start from a different perspective and propose a robust learning paradigm called JoCoR, which aims to reduce the diversity of two networks during training. Specifically, we first use two networks to make predictions on the same mini-batch data and calculate a joint loss with Co-Regularization for each training example. Then we select small-loss examples to update the parameters of both two networks simultaneously. Trained by the joint loss, these two networks would be more and more similar due to the effect of Co-Regularization. Extensive experimental results on corrupted data from benchmark datasets including MNIST, CIFAR-10, CIFAR-100 and Clothing1M demonstrate that JoCoR is superior to many state-of-the-art approaches for learning with noisy labels.
机译:带有嘈杂标签的深度学习在弱监督学习中是一个极具挑战性的问题。最新的方法“解耦”和“联合教学+”声称,“分歧”策略对于缓解带有噪音标签的学习问题至关重要。在本文中,我们从不同的角度出发,提出了一种强大的学习范式,称为JoCoR,其目的是减少训练过程中两个网络的多样性。具体来说,我们首先使用两个网络对相同的小批量数据进行预测,并针对每个训练示例使用协正则化计算联合损失。然后,我们选择损失较小的示例来同时更新两个网络的参数。受联合损失的影响,由于共同正则化的影响,这两个网络将越来越相似。对来自包括MNIST,CIFAR-10,CIFAR-100和Clothing1M等基准数据集的损坏数据的大量实验结果表明,JoCoR优于许多先进的带噪标签学习方法。

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