Scalable Inference in SDEs by Direct Matching of the Fokker–Planck–Kolmogorov Equation
Abstract
Simulation-based techniques such as variants of stochastic Runge–Kutta are the de facto approach for inference with stochastic differential equations (SDEs) in machine learning. These methods are general-purpose and used with parametric and non-parametric models, and neural SDEs. Stochastic Runge–Kutta relies on the use of sampling schemes that can be inefficient in high dimensions. We address this issue by revisiting the classical SDE literature and derive direct approximations to the (typically intractable) Fokker–Planck–Kolmogorov equation by matching moments. We show how this workflow is fast, scales to high-dimensional latent spaces, and is applicable to scarce-data applications, where a non-parametric SDE with a driving Gaussian process velocity field specifies the model.
Cite
Text
Solin et al. "Scalable Inference in SDEs by Direct Matching of the Fokker–Planck–Kolmogorov Equation." Neural Information Processing Systems, 2021.Markdown
[Solin et al. "Scalable Inference in SDEs by Direct Matching of the Fokker–Planck–Kolmogorov Equation." Neural Information Processing Systems, 2021.](https://mlanthology.org/neurips/2021/solin2021neurips-scalable/)BibTeX
@inproceedings{solin2021neurips-scalable,
title = {{Scalable Inference in SDEs by Direct Matching of the Fokker–Planck–Kolmogorov Equation}},
author = {Solin, Arno and Tamir, Ella and Verma, Prakhar},
booktitle = {Neural Information Processing Systems},
year = {2021},
url = {https://mlanthology.org/neurips/2021/solin2021neurips-scalable/}
}