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 reserv...
Neural networks have gained much interest because of their effectiveness in many applications. Howev...
We investigate the asymptotic properties of deep Residual networks (ResNets) as the number of layers...
Deep residual networks (ResNets) have shown state-of-the-art performance in various real-world appli...
In this article, we explore the effects of memory terms in continuous-layer Deep Residual Networks b...
International audienceThis paper addresses the understanding and characterization of residual networ...
Recently, deep residual networks have been successfully applied in many computer vision and natural ...
We examine the approximating power of recurrent networks for dynamical systems through an unbounded ...
Neural ordinary differential equations (ODEs) have attracted much attention as continuous-time count...
Residual connections are ubiquitous in deep learning, since besides residual networks and their vari...
In this paper we show that neural ODE analogs of recurrent (ODE-RNN) and Long Short-Term Memory (ODE...
Abstract We introduce a formal theoretical background, which includes theorems and their proofs, for...
Data-driven approximations of ordinary differential equations offer a promising alternative to class...
Residual deep neural networks (ResNets) are mathematically described as interacting particle systems...
We leverage probabilistic models of neural representations to investigate how residual networks fit ...
One of the central questions in neuroscience is how neurons and neuron populations communicate with ...
Neural networks have gained much interest because of their effectiveness in many applications. Howev...
We investigate the asymptotic properties of deep Residual networks (ResNets) as the number of layers...
Deep residual networks (ResNets) have shown state-of-the-art performance in various real-world appli...
In this article, we explore the effects of memory terms in continuous-layer Deep Residual Networks b...
International audienceThis paper addresses the understanding and characterization of residual networ...
Recently, deep residual networks have been successfully applied in many computer vision and natural ...
We examine the approximating power of recurrent networks for dynamical systems through an unbounded ...
Neural ordinary differential equations (ODEs) have attracted much attention as continuous-time count...
Residual connections are ubiquitous in deep learning, since besides residual networks and their vari...
In this paper we show that neural ODE analogs of recurrent (ODE-RNN) and Long Short-Term Memory (ODE...
Abstract We introduce a formal theoretical background, which includes theorems and their proofs, for...
Data-driven approximations of ordinary differential equations offer a promising alternative to class...
Residual deep neural networks (ResNets) are mathematically described as interacting particle systems...
We leverage probabilistic models of neural representations to investigate how residual networks fit ...
One of the central questions in neuroscience is how neurons and neuron populations communicate with ...
Neural networks have gained much interest because of their effectiveness in many applications. Howev...
We investigate the asymptotic properties of deep Residual networks (ResNets) as the number of layers...
Deep residual networks (ResNets) have shown state-of-the-art performance in various real-world appli...