MTRL-SCILGApr 7, 2025

Cross-functional transferability in universal machine learning interatomic potentials

arXiv:2504.05565v15 citationsh-index: 13
Originality Incremental advance
AI Analysis

This addresses a bottleneck in developing more accurate universal machine learning interatomic potentials for materials science, though it is incremental.

The study tackled the challenge of transferring machine learning interatomic potentials from low-fidelity to high-fidelity datasets, showing that elemental energy referencing improves data efficiency and enables significant gains even with sub-million structures.

The rapid development of universal machine learning interatomic potentials (uMLIPs) has demonstrated the possibility for generalizable learning of the universal potential energy surface. In principle, the accuracy of uMLIPs can be further improved by bridging the model from lower-fidelity datasets to high-fidelity ones. In this work, we analyze the challenge of this transfer learning problem within the CHGNet framework. We show that significant energy scale shifts and poor correlations between GGA and r$^2$SCAN pose challenges to cross-functional data transferability in uMLIPs. By benchmarking different transfer learning approaches on the MP-r$^2$SCAN dataset of 0.24 million structures, we demonstrate the importance of elemental energy referencing in the transfer learning of uMLIPs. By comparing the scaling law with and without the pre-training on a low-fidelity dataset, we show that significant data efficiency can still be achieved through transfer learning, even with a target dataset of sub-million structures. We highlight the importance of proper transfer learning and multi-fidelity learning in creating next-generation uMLIPs on high-fidelity data.

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