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Training Noise-Robust Deep Neural Networks via Meta-Learning

机译:通过元学习训练噪声鲁棒的深度神经网络

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Label noise may significantly degrade the performance of Deep Neural Networks (DNNs). To train noise-robust DNNs, Loss correction (LC) approaches have been introduced. LC approaches assume the noisy labels are corrupted from clean (ground-truth) labels by an unknown noise transition matrix T. The backbone DNNs and T can be trained separately, where T is approximated with prior knowledge. For example, T is constructed by stacking the maximum or mean predic- tions of the samples from each class. In this work, we pro- pose a new loss correction approach, named as Meta Loss Correction (MLC), to directly learn T from data via the meta-learning framework. The MLC is model-agnostic and learns T from data rather than heuristically approximates it using prior knowledge. Extensive evaluations are conducted on computer vision (MNIST, CIFAR-10, CIFAR-100, Cloth- ing1M) and natural language processing (Twitter) datasets. The experimental results show that MLC achieves very com- petitive performance against state-of-the-art approaches.
机译:标签噪声可能会显着降低深度神经网络(DNN)的性能。为了训练噪声稳健的DNN,介绍了丢失校正(LC)方法。 LC方法假设噪声标签由清洁(地面真理)标签通过未知的噪声转换矩阵T.骨干DNN和T可以分开训练,其中T近似于先验知识。例如,通过堆叠来自每个类的样本的最大或平均预测来构造T.在这项工作中,我们提出了一种新的损失校正方法,命名为元丢失校正(MLC),直接通过元学习框架从数据中学习T. MLC是模型 - 不可知的,并从数据中学习T,而不是使用先验知识来实现​​它。在计算机视觉(MNIST,CIFAR-10,CIFAR-100,布ING1M)和自然语言处理(Twitter)数据集中进行了广泛的评估。实验结果表明,MLC实现了对最先进的方法的疑难表现。

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