Neural SDEs as Infinite-Dimensional GANs

02/06/2021
by   Patrick Kidger, et al.
16

Stochastic differential equations (SDEs) are a staple of mathematical modelling of temporal dynamics. However, a fundamental limitation has been that such models have typically been relatively inflexible, which recent work introducing Neural SDEs has sought to solve. Here, we show that the current classical approach to fitting SDEs may be approached as a special case of (Wasserstein) GANs, and in doing so the neural and classical regimes may be brought together. The input noise is Brownian motion, the output samples are time-evolving paths produced by a numerical solver, and by parameterising a discriminator as a Neural Controlled Differential Equation (CDE), we obtain Neural SDEs as (in modern machine learning parlance) continuous-time generative time series models. Unlike previous work on this problem, this is a direct extension of the classical approach without reference to either prespecified statistics or density functions. Arbitrary drift and diffusions are admissible, so as the Wasserstein loss has a unique global minima, in the infinite data limit any SDE may be learnt.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/18/2020

Neural Controlled Differential Equations for Irregular Time Series

Neural ordinary differential equations are an attractive option for mode...
research
11/01/2021

Sig-Wasserstein GANs for Time Series Generation

Synthetic data is an emerging technology that can significantly accelera...
research
05/06/2022

Generative Adversarial Neural Operators

We propose the generative adversarial neural operator (GANO), a generati...
research
10/19/2021

Neural Stochastic Partial Differential Equations

Stochastic partial differential equations (SPDEs) are the mathematical t...
research
05/26/2023

On the Generalization Capacities of Neural Controlled Differential Equations

We consider a supervised learning setup in which the goal is to predicts...
research
05/30/2022

Infinite-dimensional optimization and Bayesian nonparametric learning of stochastic differential equations

The paper has two major themes. The first part of the paper establishes ...

Please sign up or login with your details

Forgot password? Click here to reset