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A Modified Back-Propagation Algorithm to Deal with Severe Two-Class Imbalance Problems on Neural Networks

机译:一种改进的反向传播算法,用于处理神经网络上的严重两类不平衡问题

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In this paper we propose a modified back-propagation to deal with severe two-class imbalance problems. The method consists in automatically to find the over-sampling rate to train a neural network (NN), i.e., identify the appropriate number of minority samples to train the NN during the learning stage, so to reduce training time. The experimental results show that the performance proposed method is a very competitive when it is compared with conventional SMOTE, and its training time is lesser.
机译:在本文中,我们提出了一种改进的反向传播算法来处理严重的两类不平衡问题。该方法在于自动找到训练神经网络(NN)的过采样率,即在学习阶段识别适当数量的少数样本来训练NN,从而减少训练时间。实验结果表明,与常规SMOTE相比,该方法具有很好的竞争性,并且训练时间短。

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