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Composable and adaptive design of machine learning interatomic potentials guided by Fisher-information analysis

27 April 2025
Weishi Wang
Mark K. Transtrum
Vincenzo Lordi
Vasily V. Bulatov
Amit Samanta
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Abstract

An adaptive physics-informed model design strategy for machine-learning interatomic potentials (MLIPs) is proposed. This strategy follows an iterative reconfiguration of composite models from single-term models, followed by a unified training procedure. A model evaluation method based on the Fisher information matrix (FIM) and multiple-property error metrics is proposed to guide model reconfiguration and hyperparameter optimization. Combining the model reconfiguration and the model evaluation subroutines, we provide an adaptive MLIP design strategy that balances flexibility and extensibility. In a case study of designing models against a structurally diverse niobium dataset, we managed to obtain an optimal configuration with 75 parameters generated by our framework that achieved a force RMSE of 0.172 eV/Å and an energy RMSE of 0.013 eV/atom.

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@article{wang2025_2504.19372,
  title={ Composable and adaptive design of machine learning interatomic potentials guided by Fisher-information analysis },
  author={ Weishi Wang and Mark K. Transtrum and Vincenzo Lordi and Vasily V. Bulatov and Amit Samanta },
  journal={arXiv preprint arXiv:2504.19372},
  year={ 2025 }
}
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