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Training deep neural networks on imbalanced data sets

机译:在不平衡数据集上训练深度神经网络

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Deep learning has become increasingly popular in both academic and industrial areas in the past years. Various domains including pattern recognition, computer vision, and natural language processing have witnessed the great power of deep networks. However, current studies on deep learning mainly focus on data sets with balanced class labels, while its performance on imbalanced data is not well examined. Imbalanced data sets exist widely in real world and they have been providing great challenges for classification tasks. In this paper, we focus on the problem of classification using deep network on imbalanced data sets. Specifically, a novel loss function called mean false error together with its improved version mean squared false error are proposed for the training of deep networks on imbalanced data sets. The proposed method can effectively capture classification errors from both majority class and minority class equally. Experiments and comparisons demonstrate the superiority of the proposed approach compared with conventional methods in classifying imbalanced data sets on deep neural networks.
机译:在过去的几年中,深度学习在学术和工业领域都变得越来越流行。模式识别,计算机视觉和自然语言处理等各个领域都见证了深度网络的强大力量。但是,当前有关深度学习的研究主要集中在具有平衡类标签的数据集上,而对于不平衡数据的性能还没有得到很好的检验。不平衡的数据集在现实世界中广泛存在,它们为分类任务提出了巨大的挑战。在本文中,我们关注于在不平衡数据集上使用深度网络进行分类的问题。具体来说,提出了一种新颖的称为均值错误误差的损失函数及其改进的均值平方错误误差函数,用于训练不平衡数据集上的深层网络。所提方法可以有效地同时捕获多数类和少数类的分类错误。实验和比较表明,与传统方法相比,该方法在深度神经网络上对不平衡数据集进行分类方面具有优越性。

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