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Empirical Study of Extreme Overfitting Points of Neural Networks

机译:神经网络极端过度拟合点的实证研究

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摘要

In this paper we propose a method of obtaining points of extreme overfitting-parameters of modern neural networks, at which they demonstrate close to 100% training accuracy, simultaneously with almost zero accuracy on the test sample. Despite the widespread opinion that the overwhelming majority of critical points of the loss function of a neural network have equally good generalizing ability, such points have a huge generalization error. The paper studies the properties of such points and their location on the surface of the loss function of modern neural networks.
机译:在本文中,我们提出了一种获得现代神经网络极端过度拟合参数的方法,它们在测试样品上同时展示接近100%的训练精度。尽管普遍认为,神经网络的损失功能的绝大多数关键点具有同样良好的概率能力,但这些点具有巨大的概括误差。本文研究了现代神经网络的损失功能的损失函数表面的特性及其位置。

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