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Ensemble Learning of Machine Learning Force Fields

Machine Learning 2025-12-09 v2 Chemical Physics

Abstract

Machine learning force fields (MLFFs) are a promising approach to balance the accuracy of quantum mechanics with the efficiency of classical potentials, yet selecting an optimal model amid increasingly diverse architectures that delivers reliable force predictions and stable simulations remains a core pratical challenge. Here we introduce EL-MLFFs, an ensemble learning framework that uses a stacking methodology to integrate predictions from diverse base MLFFs. Our approach constructs a graph representation where a graph neural network (GNN) acts as a meta-model to refine the initial force predictions. We present two meta-model architectures: a computationally efficient direct fitting model and a physically-principled conservative model that ensures energy conservation. The framework is evaluated on a diverse range of systems, including single molecules (methane), surface chemistry (methanol/Cu(100)), molecular dynamics benchmarks (MD17), and the MatPES materials dataset. Results show that EL-MLFFs improves predictive accuracy across these domains. For molecular systems, it reduces force errors and improves the simulation stability compared to base models. For materials, the method yields lower formation energy errors on the WBM test set. The EL- MLFFs framework offers a systematic approach to address challenges of model selection and the accuracy-stability trade-off in molecular and materials simulations.

Keywords

Cite

@article{arxiv.2403.17507,
  title  = {Ensemble Learning of Machine Learning Force Fields},
  author = {Bangchen Yin and Yue Yin and Yuda W. Tang and Hai Xiao},
  journal= {arXiv preprint arXiv:2403.17507},
  year   = {2025}
}

Comments

12 pages, 3 figures

R2 v1 2026-06-28T15:33:51.696Z