Neural Laplace for learning Stochastic Differential Equations
- URL: http://arxiv.org/abs/2406.04964v1
- Date: Fri, 7 Jun 2024 14:29:30 GMT
- Title: Neural Laplace for learning Stochastic Differential Equations
- Authors: Adrien Carrel,
- Abstract summary: Neuralplace is a unified framework for learning diverse classes of differential equations (DE)
For different classes of DE, this framework outperforms other approaches relying on neural networks that aim to learn classes of ordinary differential equations (ODE)
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Neural Laplace is a unified framework for learning diverse classes of differential equations (DE). For different classes of DE, this framework outperforms other approaches relying on neural networks that aim to learn classes of ordinary differential equations (ODE). However, many systems can't be modelled using ODEs. Stochastic differential equations (SDE) are the mathematical tool of choice when modelling spatiotemporal DE dynamics under the influence of randomness. In this work, we review the potential applications of Neural Laplace to learn diverse classes of SDE, both from a theoretical and a practical point of view.
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