反向传播的数值不稳定性导致神经网络训练的局限性

IF 1.7 3区 数学 Q2 MATHEMATICS, APPLIED Advances in Computational Mathematics Pub Date : 2024-02-11 DOI:10.1007/s10444-024-10106-x
Clemens Karner, Vladimir Kazeev, Philipp Christian Petersen
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引用次数: 0

摘要

我们研究了用梯度下降法训练深度神经网络,其中使用浮点运算来计算梯度。在这一框架和现实假设条件下,我们证明了在梯度下降训练过程中,不太可能找到能保持与层数相关的超线性仿射片段的 ReLU 神经网络。在几乎所有产生高阶多项式逼近率的逼近理论论证中,都使用了仿射片段数量与其层数成指数关系的 ReLU 神经网络序列。因此,我们得出结论,梯度下降在实践中产生的 ReLU 神经网络近似序列与理论上构建的序列有很大不同。我们将假设和理论结果与数值研究进行了比较,得出了一致的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Limitations of neural network training due to numerical instability of backpropagation

We study the training of deep neural networks by gradient descent where floating-point arithmetic is used to compute the gradients. In this framework and under realistic assumptions, we demonstrate that it is highly unlikely to find ReLU neural networks that maintain, in the course of training with gradient descent, superlinearly many affine pieces with respect to their number of layers. In virtually all approximation theoretical arguments which yield high order polynomial rates of approximation, sequences of ReLU neural networks with exponentially many affine pieces compared to their numbers of layers are used. As a consequence, we conclude that approximating sequences of ReLU neural networks resulting from gradient descent in practice differ substantially from theoretically constructed sequences. The assumptions and the theoretical results are compared to a numerical study, which yields concurring results.

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来源期刊
CiteScore
3.00
自引率
5.90%
发文量
68
审稿时长
3 months
期刊介绍: Advances in Computational Mathematics publishes high quality, accessible and original articles at the forefront of computational and applied mathematics, with a clear potential for impact across the sciences. The journal emphasizes three core areas: approximation theory and computational geometry; numerical analysis, modelling and simulation; imaging, signal processing and data analysis. This journal welcomes papers that are accessible to a broad audience in the mathematical sciences and that show either an advance in computational methodology or a novel scientific application area, or both. Methods papers should rely on rigorous analysis and/or convincing numerical studies.
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