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首页> 外文期刊>The Journal of Chemical Physics >An entropy-maximization approach to automated training set generation for interatomic potentials
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An entropy-maximization approach to automated training set generation for interatomic potentials

机译:An entropy-maximization approach to automated training set generation for interatomic potentials

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摘要

Machine learning-based interatomic potentials are currently garnering a lot of attention as they strive to achieve the accuracy of electronic structure methods at the computational cost of empirical potentials. Given their generic functional forms, the transferability of these potentials is highly dependent on the quality of the training set, the generation of which can be highly labor-intensive. Good training sets should at once contain a very diverse set of configurations while avoiding redundancies that incur cost without providing benefits. We formalize these requirements in a local entropy-maximization framework and propose an automated sampling scheme to sample from this objective function. We show that this approach generates much more diverse training sets than unbiased sampling and is competitive with hand-crafted training sets. Published under license by AIP Publishing.

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