Neural Delay Differential Equations

02/22/2021
by   Qunxi Zhu, et al.
16

Neural Ordinary Differential Equations (NODEs), a framework of continuous-depth neural networks, have been widely applied, showing exceptional efficacy in coping with some representative datasets. Recently, an augmented framework has been successfully developed for conquering some limitations emergent in application of the original framework. Here we propose a new class of continuous-depth neural networks with delay, named as Neural Delay Differential Equations (NDDEs), and, for computing the corresponding gradients, we use the adjoint sensitivity method to obtain the delayed dynamics of the adjoint. Since the differential equations with delays are usually seen as dynamical systems of infinite dimension possessing more fruitful dynamics, the NDDEs, compared to the NODEs, own a stronger capacity of nonlinear representations. Indeed, we analytically validate that the NDDEs are of universal approximators, and further articulate an extension of the NDDEs, where the initial function of the NDDEs is supposed to satisfy ODEs. More importantly, we use several illustrative examples to demonstrate the outstanding capacities of the NDDEs and the NDDEs with ODEs' initial value. Specifically, (1) we successfully model the delayed dynamics where the trajectories in the lower-dimensional phase space could be mutually intersected, while the traditional NODEs without any argumentation are not directly applicable for such modeling, and (2) we achieve lower loss and higher accuracy not only for the data produced synthetically by complex models but also for the real-world image datasets, i.e., CIFAR10, MNIST, and SVHN. Our results on the NDDEs reveal that appropriately articulating the elements of dynamical systems into the network design is truly beneficial to promoting the network performance.

READ FULL TEXT

page 1

page 2

page 4

page 9

page 10

page 11

page 15

page 19

research
04/11/2023

Neural Delay Differential Equations: System Reconstruction and Image Classification

Neural Ordinary Differential Equations (NODEs), a framework of continuou...
research
01/04/2022

Neural Piecewise-Constant Delay Differential Equations

Continuous-depth neural networks, such as the Neural Ordinary Differenti...
research
06/12/2020

On Second Order Behaviour in Augmented Neural ODEs

Neural Ordinary Differential Equations (NODEs) are a new class of models...
research
10/26/2022

Sparsity in Continuous-Depth Neural Networks

Neural Ordinary Differential Equations (NODEs) have proven successful in...
research
12/12/2020

Delay Differential Neural Networks

Neural ordinary differential equations (NODEs) treat computation of inte...
research
07/12/2023

Trainability, Expressivity and Interpretability in Gated Neural ODEs

Understanding how the dynamics in biological and artificial neural netwo...
research
06/24/2021

Sparse Flows: Pruning Continuous-depth Models

Continuous deep learning architectures enable learning of flexible proba...

Please sign up or login with your details

Forgot password? Click here to reset