In this article, we explore the effects of memory terms in continuous-layer Deep Residual Networks by studying Neural ODEs (NODEs). We investigate two types of models. On one side, we consider the case of Residual Neural Networks with dependence on multiple layers, more precisely Momentum ResNets. On the other side, we analyse a Neural ODE with auxiliary states playing the role of memory states.We examine the interpolation and universal approximation properties for both architectures through a simultaneous control perspective. We also prove the ability of the second model to represent sophisticated maps, such as parametrizations of time-dependent functions. Numerical simulations complement our study. (c) 2022 Elsevier B.V. All rights reserved.
Domènec Ruiz-Balet, Elisa Affili, Enrique Zuazua (2022). Interpolation and approximation via Momentum ResNets and Neural ODEs. SYSTEMS & CONTROL LETTERS, 162, 1-13 [10.1016/j.sysconle.2022.105182].
Interpolation and approximation via Momentum ResNets and Neural ODEs
Elisa Affili;
2022
Abstract
In this article, we explore the effects of memory terms in continuous-layer Deep Residual Networks by studying Neural ODEs (NODEs). We investigate two types of models. On one side, we consider the case of Residual Neural Networks with dependence on multiple layers, more precisely Momentum ResNets. On the other side, we analyse a Neural ODE with auxiliary states playing the role of memory states.We examine the interpolation and universal approximation properties for both architectures through a simultaneous control perspective. We also prove the ability of the second model to represent sophisticated maps, such as parametrizations of time-dependent functions. Numerical simulations complement our study. (c) 2022 Elsevier B.V. All rights reserved.File | Dimensione | Formato | |
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2110.08761.pdf
Open Access dal 12/03/2024
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