Predicting Partially Observable Dynamical Systems via Diffusion Models with a Multiscale Inference Scheme
Abstract
Conditional diffusion models provide a natural framework for probabilistic prediction of dynamical systems and have been successfully applied to fluid dynamics and weather prediction. However, in many settings, the available information at a given time represents only a small fraction of what is needed to predict future states, either due to measurement uncertainty or because only a small fraction of the state can be observed. This is true for example in solar physics, where we can observe the Sun’s surface and atmosphere, but its evolution is driven by internal processes for which we lack direct measurements. In this paper, we tackle the probabilistic prediction of partially observable, long-memory dynamical systems, with applications to solar dynamics and the evolution of active regions. We show that standard inference schemes, such as autoregressive rollouts, fail to capture long-range dependencies in the data, largely because they do not integrate past information effectively. To overcome this, we propose a multiscale inference scheme for diffusion models, tailored to physical processes. Our method generates trajectories that are temporally fine-grained near the present and coarser as we move farther away, which enables capturing long-range temporal dependencies without increasing computational cost. When integrated into a diffusion model, we show that our inference scheme significantly reduces the bias of the predicted distributions and improves rollout stability.
Cite
Text
Morel et al. "Predicting Partially Observable Dynamical Systems via Diffusion Models with a Multiscale Inference Scheme." Advances in Neural Information Processing Systems, 2025.Markdown
[Morel et al. "Predicting Partially Observable Dynamical Systems via Diffusion Models with a Multiscale Inference Scheme." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/morel2025neurips-predicting/)BibTeX
@inproceedings{morel2025neurips-predicting,
title = {{Predicting Partially Observable Dynamical Systems via Diffusion Models with a Multiscale Inference Scheme}},
author = {Morel, Rudy and Ramunno, Francesco Pio and Shen, Jeff and Bietti, Alberto and Cho, Kyunghyun and Cranmer, Miles and Golkar, Siavash and Gugnin, Olexandr and Krawezik, Geraud and Marwah, Tanya and McCabe, Michael and Meyer, Lucas Thibaut and Mukhopadhyay, Payel and Ohana, Ruben and Parker, Liam Holden and Qu, Helen and Rozet, François and Leka, K.D. and Lanusse, Francois and Fouhey, David and Ho, Shirley},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/morel2025neurips-predicting/}
}