Stochasticity in Neural ODEs: An Empirical Study

02/22/2020
by   Viktor Oganesyan, et al.
0

Stochastic regularization of neural networks (e.g. dropout) is a wide-spread technique in deep learning that allows for better generalization. Despite its success, continuous-time models, such as neural ordinary differential equation (ODE), usually rely on a completely deterministic feed-forward operation. This work provides an empirical study of stochastically regularized neural ODE on several image-classification tasks (CIFAR-10, CIFAR-100, TinyImageNet). Building upon the formalism of stochastic differential equations (SDEs), we demonstrate that neural SDE is able to outperform its deterministic counterpart. Further, we show that data augmentation during the training improves the performance of both deterministic and stochastic versions of the same model. However, the improvements obtained by the data augmentation completely eliminate the empirical gains of the stochastic regularization, making the difference in the performance of neural ODE and neural SDE negligible.

READ FULL TEXT
research
12/02/2019

Differential Bayesian Neural Nets

Neural Ordinary Differential Equations (N-ODEs) are a powerful building ...
research
04/29/2019

Stability of stochastic impulsive differential equations: integrating the cyber and the physical of stochastic systems

According to Newton's second law of motion, we humans describe a dynamic...
research
01/16/2013

Stochastic Pooling for Regularization of Deep Convolutional Neural Networks

We introduce a simple and effective method for regularizing large convol...
research
07/19/2019

Post-synaptic potential regularization has potential

Improving generalization is one of the main challenges for training deep...
research
10/17/2021

Network Augmentation for Tiny Deep Learning

We introduce Network Augmentation (NetAug), a new training method for im...
research
05/18/2022

Large Neural Networks Learning from Scratch with Very Few Data and without Regularization

Recent findings have shown that Neural Networks generalize also in over-...
research
06/18/2020

STEER : Simple Temporal Regularization For Neural ODEs

Training Neural Ordinary Differential Equations (ODEs) is often computat...

Please sign up or login with your details

Forgot password? Click here to reset