MatRIS: Toward Reliable and Efficient Pretrained Machine Learning Interatomic Potentials

Abstract

Foundation MLIPs demonstrate broad applicability across diverse material systems and have emerged as a powerful and transformative paradigm in chemical and computational materials science. Equivariant MLIPs achieve state-of-the-art accuracy in a wide range of benchmarks by incorporating equivariant inductive bias. However, the reliance on tensor products and high-degree representations makes them computationally costly. This raises a fundamental question: as quantum mechanical-based datasets continue to expand, can we develop a more compact model to thoroughly exploit high-dimensional atomic interactions? In this work, we present MatRIS (\textbf{Mat}erials \textbf{R}epresentation and \textbf{I}nteraction \textbf{S}imulation), an invariant MLIP that introduces attention-based modeling of three-body interactions. MatRIS leverages a novel separable attention mechanism with linear complexity $O(N)$, enabling both scalability and expressiveness. MatRIS delivers accuracy comparable to that of leading equivariant models on a wide range of popular benchmarks (Matbench-Discovery, MatPES, MDR phonon, Molecular dataset, etc). Taking Matbench-Discovery as an example, MatRIS achieves an F1 score of up to 0.847 and attains comparable accuracy at a lower training cost. The work indicates that our carefully designed invariant models can match or exceed the accuracy of equivariant models at a fraction of the cost, shedding light on the development of accurate and efficient MLIPs.

Cite

Text

Zhou et al. "MatRIS: Toward Reliable and Efficient Pretrained Machine Learning Interatomic Potentials." International Conference on Learning Representations, 2026.

Markdown

[Zhou et al. "MatRIS: Toward Reliable and Efficient Pretrained Machine Learning Interatomic Potentials." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/zhou2026iclr-matris/)

BibTeX

@inproceedings{zhou2026iclr-matris,
  title     = {{MatRIS: Toward Reliable and Efficient Pretrained Machine Learning Interatomic Potentials}},
  author    = {Zhou, Yuanchang and Hu, Siyu and Zhang, Xiangyu and Wang, Hongyu and Tan, Guangming and Jia, Weile},
  booktitle = {International Conference on Learning Representations},
  year      = {2026},
  url       = {https://mlanthology.org/iclr/2026/zhou2026iclr-matris/}
}