从 NeurODEs 到 AutoencODEs:宽度可变神经网络的均场控制框架

IF 2.3 4区 数学 Q1 MATHEMATICS, APPLIED European Journal of Applied Mathematics Pub Date : 2024-02-08 DOI:10.1017/s0956792524000032
Cristina Cipriani, Massimo Fornasier, Alessandro Scagliotti
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引用次数: 0

摘要

残差神经网络(ResNets)与连续时间控制系统(称为 NeurODE)之间的联系促成了对神经网络的数学分析,并提供了具有理论和实践意义的有趣结果。然而,从结构上看,NeurODEs 一直局限于描述恒定宽度的层,因此不适合对具有可变宽度层的深度学习架构进行建模。在本文中,我们提出了一种连续时间自动编码器,我们称之为 AutoencODE,它基于对驱动动力学的受控场的修改。这种调整可以扩展最初为传统神经编码器设计的均值场控制框架。在这种情况下,我们解决了低 Tikhonov 正则化的问题,这可能会导致成本景观不凸。虽然在高 Tikhonov 正则化条件下获得的全局结果可能无法在全局范围内成立,但我们证明,其中许多结果可以在损失函数为局部凸的区域内恢复。受理论发现的启发,我们开发了一种针对这种具有残差连接的特定类型自动编码器的训练方法,并通过在各种示例上进行的数值实验验证了我们的方法。
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From NeurODEs to AutoencODEs: A mean-field control framework for width-varying neural networks
The connection between Residual Neural Networks (ResNets) and continuous-time control systems (known as NeurODEs) has led to a mathematical analysis of neural networks, which has provided interesting results of both theoretical and practical significance. However, by construction, NeurODEs have been limited to describing constant-width layers, making them unsuitable for modelling deep learning architectures with layers of variable width. In this paper, we propose a continuous-time Autoencoder, which we call AutoencODE, based on a modification of the controlled field that drives the dynamics. This adaptation enables the extension of the mean-field control framework originally devised for conventional NeurODEs. In this setting, we tackle the case of low Tikhonov regularisation, resulting in potentially non-convex cost landscapes. While the global results obtained for high Tikhonov regularisation may not hold globally, we show that many of them can be recovered in regions where the loss function is locally convex. Inspired by our theoretical findings, we develop a training method tailored to this specific type of Autoencoders with residual connections, and we validate our approach through numerical experiments conducted on various examples.
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来源期刊
CiteScore
4.70
自引率
0.00%
发文量
31
审稿时长
>12 weeks
期刊介绍: Since 2008 EJAM surveys have been expanded to cover Applied and Industrial Mathematics. Coverage of the journal has been strengthened in probabilistic applications, while still focusing on those areas of applied mathematics inspired by real-world applications, and at the same time fostering the development of theoretical methods with a broad range of applicability. Survey papers contain reviews of emerging areas of mathematics, either in core areas or with relevance to users in industry and other disciplines. Research papers may be in any area of applied mathematics, with special emphasis on new mathematical ideas, relevant to modelling and analysis in modern science and technology, and the development of interesting mathematical methods of wide applicability.
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