Neural dynamics for improving optimiser in deep learning with noise considered

IF 8.4 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Dan Su, Predrag S. Stanimirović, Ling Bo Han, Long Jin
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引用次数: 0

Abstract

As deep learning evolves, neural network structures become increasingly sophisticated, bringing a series of new optimisation challenges. For example, deep neural networks (DNNs) are vulnerable to a variety of attacks. Training neural networks under privacy constraints is a method to alleviate privacy leakage, and one way to do this is to add noise to the gradient. However, the existing optimisers suffer from weak convergence in the presence of increased noise during training, which leads to a low robustness of the optimiser. To stabilise and improve the convergence of DNNs, the authors propose a neural dynamics (ND) optimiser, which is inspired by the zeroing neural dynamics originated from zeroing neural networks. The authors first analyse the relationship between DNNs and control systems. Then, the authors construct the ND optimiser to update network parameters. Moreover, the proposed ND optimiser alleviates the non-convergence problem that may be suffered by adding noise to the gradient from different scenarios. Furthermore, experiments are conducted on different neural network structures, including ResNet18, ResNet34, Inception-v3, MobileNet, and long and short-term memory network. Comparative results using CIFAR, YouTube Faces, and R8 datasets demonstrate that the ND optimiser improves the accuracy and stability of DNNs under noise-free and noise-polluted conditions. The source code is publicly available at https://github.com/LongJin-lab/ND.

Abstract Image

在考虑噪声的深度学习中改进优化器的神经动力学
随着深度学习的发展,神经网络结构变得越来越复杂,带来了一系列新的优化挑战。例如,深度神经网络(DNN)容易受到各种攻击。在隐私约束下训练神经网络是缓解隐私泄露的一种方法,其中一种方法是在梯度中添加噪声。然而,现有的优化器在训练过程中出现噪声增加时收敛性较弱,导致优化器的鲁棒性较低。为了稳定和提高 DNN 的收敛性,作者提出了一种神经动力学(ND)优化器,其灵感来源于归零神经网络的归零神经动力学。作者首先分析了 DNN 与控制系统之间的关系。然后,作者构建了 ND 优化器来更新网络参数。此外,所提出的 ND 优化器还缓解了因在不同情况下向梯度添加噪声而可能导致的不收敛问题。此外,他们还在不同的神经网络结构上进行了实验,包括 ResNet18、ResNet34、Inception-v3、MobileNet 以及长短期记忆网络。使用 CIFAR、YouTube Faces 和 R8 数据集得出的比较结果表明,ND 优化器提高了无噪声和噪声污染条件下 DNN 的准确性和稳定性。源代码可在 https://github.com/LongJin-lab/ND 公开获取。
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来源期刊
CAAI Transactions on Intelligence Technology
CAAI Transactions on Intelligence Technology COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
11.00
自引率
3.90%
发文量
134
审稿时长
35 weeks
期刊介绍: CAAI Transactions on Intelligence Technology is a leading venue for original research on the theoretical and experimental aspects of artificial intelligence technology. We are a fully open access journal co-published by the Institution of Engineering and Technology (IET) and the Chinese Association for Artificial Intelligence (CAAI) providing research which is openly accessible to read and share worldwide.
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