Simulation-Free Schrödinger Bridges via Score and Flow Matching
Abstract
We present simulation-free score and flow matching ([SF]$^2$M), a simulation-free objective for inferring stochastic dynamics given unpaired source and target samples drawn from arbitrary distributions. Our method generalizes both the score-matching loss used in the training of diffusion models and the recently proposed flow matching loss used in the training of continuous normalizing flows. [SF]$^2$M interprets continuous-time stochastic generative modeling as a Schr\"odinger bridge (SB) problem. It relies on static entropy-regularized optimal transport, or a minibatch approximation, to efficiently learn the SB without simulating the learned stochastic process. We find that [SF]$^2$M is more efficient and gives more accurate solutions to the SB problem than simulation-based methods from prior work. Finally, we apply [SF]$^2$M to the problem of learning cell dynamics from snapshot data. Notably, [SF]$^2$M is the first method to accurately model cell dynamics in high dimensions and can recover known gene regulatory networks from simulated data.
Cite
Text
Tong et al. "Simulation-Free Schrödinger Bridges via Score and Flow Matching." ICML 2023 Workshops: Frontiers4LCD, 2023.Markdown
[Tong et al. "Simulation-Free Schrödinger Bridges via Score and Flow Matching." ICML 2023 Workshops: Frontiers4LCD, 2023.](https://mlanthology.org/icmlw/2023/tong2023icmlw-simulationfree/)BibTeX
@inproceedings{tong2023icmlw-simulationfree,
title = {{Simulation-Free Schrödinger Bridges via Score and Flow Matching}},
author = {Tong, Alexander and Malkin, Nikolay and Fatras, Kilian and Atanackovic, Lazar and Zhang, Yanlei and Huguet, Guillaume and Wolf, Guy and Bengio, Yoshua},
booktitle = {ICML 2023 Workshops: Frontiers4LCD},
year = {2023},
url = {https://mlanthology.org/icmlw/2023/tong2023icmlw-simulationfree/}
}