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 gen...
In this paper, we establish that for a wide class of controlled stochastic differential equations (S...
Variance reduction techniques are of crucial importance for the efficiency of Monte Carlo simulation...
International audienceOver the last few years, a new paradigm of generative models based ...
International audienceStochastic differential equations (SDEs) are one of the most important represe...
Neural SDEs combine many of the best qualities of both RNNs and SDEs: memory efficient training, hig...
Stochastic partial differential equations (SPDEs) are the mathematical tool of choice for modelling ...
The conjoining of dynamical systems and deep learning has become a topic of great interest. In parti...
Neural SDEs with Brownian motion as noise lead to smoother attributions than traditional ResNets. Va...
Generative adversarial networks (GANs) have shown promising results when applied on partial differen...
We present a novel model Graph Neural Stochastic Differential Equations (Graph Neural SDEs). This te...
uous state version of recurrent neural networks. These networks are of interest for two reasons: (1)...
The formation of pattern in biological systems may be modeled by a set of reaction-diffusion equatio...
The deep learning optimization community has observed how the neural networks generalization ability...
Generative adversarial networks (GANs) have shown promising results when applied on partial differen...
Neural controlled differential equations (NCDEs), which are continuous analogues to recurrent neural...
In this paper, we establish that for a wide class of controlled stochastic differential equations (S...
Variance reduction techniques are of crucial importance for the efficiency of Monte Carlo simulation...
International audienceOver the last few years, a new paradigm of generative models based ...
International audienceStochastic differential equations (SDEs) are one of the most important represe...
Neural SDEs combine many of the best qualities of both RNNs and SDEs: memory efficient training, hig...
Stochastic partial differential equations (SPDEs) are the mathematical tool of choice for modelling ...
The conjoining of dynamical systems and deep learning has become a topic of great interest. In parti...
Neural SDEs with Brownian motion as noise lead to smoother attributions than traditional ResNets. Va...
Generative adversarial networks (GANs) have shown promising results when applied on partial differen...
We present a novel model Graph Neural Stochastic Differential Equations (Graph Neural SDEs). This te...
uous state version of recurrent neural networks. These networks are of interest for two reasons: (1)...
The formation of pattern in biological systems may be modeled by a set of reaction-diffusion equatio...
The deep learning optimization community has observed how the neural networks generalization ability...
Generative adversarial networks (GANs) have shown promising results when applied on partial differen...
Neural controlled differential equations (NCDEs), which are continuous analogues to recurrent neural...
In this paper, we establish that for a wide class of controlled stochastic differential equations (S...
Variance reduction techniques are of crucial importance for the efficiency of Monte Carlo simulation...
International audienceOver the last few years, a new paradigm of generative models based ...