Denoising Hamiltonian Network for Physical Reasoning

Abstract

Machine learning frameworks for physical problems must capture and enforce physical constraints that preserve the structure of dynamical systems. Many existing approaches achieve this by integrating physical operators into neural networks. While these methods offer theoretical guarantees, they face two key limitations: (i) they primarily model local relations between adjacent time steps, overlooking longer-range or higher-level physical interactions, and (ii) they focus on forward simulation while neglecting broader physical reasoning tasks. We propose the Denoising Hamiltonian Network (DHN), a novel framework that generalizes Hamiltonian mechanics operators into more flexible neural operators. DHN captures non-local temporal relationships and mitigates numerical integration errors through a denoising mechanism. DHN also supports multi-system modeling with a global conditioning mechanism. We demonstrate its effectiveness and flexibility across three diverse physical reasoning tasks with distinct inputs and outputs.

Cite

Text

Deng et al. "Denoising Hamiltonian Network for Physical Reasoning." Transactions on Machine Learning Research, 2026.

Markdown

[Deng et al. "Denoising Hamiltonian Network for Physical Reasoning." Transactions on Machine Learning Research, 2026.](https://mlanthology.org/tmlr/2026/deng2026tmlr-denoising/)

BibTeX

@article{deng2026tmlr-denoising,
  title     = {{Denoising Hamiltonian Network for Physical Reasoning}},
  author    = {Deng, Congyue and Feng, Brandon Y. and Garraffo, Cecilia and Garbarz, Alan and Walters, Robin and Freeman, William T. and Guibas, Leonidas and He, Kaiming},
  journal   = {Transactions on Machine Learning Research},
  year      = {2026},
  url       = {https://mlanthology.org/tmlr/2026/deng2026tmlr-denoising/}
}