大输入数据情况下残差神经网络的连续极限

IF 0.3 Q4 MATHEMATICS
M. Herty, Anna Thünen, T. Trimborn, G. Visconti
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引用次数: 1

摘要

摘要残差深度神经网络(ResNets)在数学上被描述为相互作用的粒子系统。在无限多层的情况下,ResNet导致了一个常微分方程耦合系统,称为神经微分方程。对于大规模输入数据,我们导出了平均场极限,并展示了结果描述的适定性。此外,我们从可控性和最优控制的角度分析了训练过程解的存在性。基于形式最优性系统解的数值研究说明了理论发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Continuous limits of residual neural networks in case of large input data
Abstract Residual deep neural networks (ResNets) are mathematically described as interacting particle systems. In the case of infinitely many layers the ResNet leads to a system of coupled system of ordinary differential equations known as neural differential equations. For large scale input data we derive a mean–field limit and show well–posedness of the resulting description. Further, we analyze the existence of solutions to the training process by using both a controllability and an optimal control point of view. Numerical investigations based on the solution of a formal optimality system illustrate the theoretical findings.
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
3
审稿时长
16 weeks
期刊介绍: Communications in Applied and Industrial Mathematics (CAIM) is one of the official journals of the Italian Society for Applied and Industrial Mathematics (SIMAI). Providing immediate open access to original, unpublished high quality contributions, CAIM is devoted to timely report on ongoing original research work, new interdisciplinary subjects, and new developments. The journal focuses on the applications of mathematics to the solution of problems in industry, technology, environment, cultural heritage, and natural sciences, with a special emphasis on new and interesting mathematical ideas relevant to these fields of application . Encouraging novel cross-disciplinary approaches to mathematical research, CAIM aims to provide an ideal platform for scientists who cooperate in different fields including pure and applied mathematics, computer science, engineering, physics, chemistry, biology, medicine and to link scientist with professionals active in industry, research centres, academia or in the public sector. Coverage includes research articles describing new analytical or numerical methods, descriptions of modelling approaches, simulations for more accurate predictions or experimental observations of complex phenomena, verification/validation of numerical and experimental methods; invited or submitted reviews and perspectives concerning mathematical techniques in relation to applications, and and fields in which new problems have arisen for which mathematical models and techniques are not yet available.
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