Approximate label symmetries improve scaling laws for ML models of hydrogen orbital densities, water vibrational modes, and 3D potential energy surfaces, with a Hessian correction for approximate cases.
Scaling Laws and Symmetry, Evidence from Neural Force Fields
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abstract
We present an empirical study in the geometric task of learning interatomic potentials, which shows equivariance matters even more at larger scales; we show a clear power-law scaling behaviour with respect to data, parameters and compute with ``architecture-dependent exponents''. In particular, we observe that equivariant architectures, which leverage task symmetry, scale better than non-equivariant models. Moreover, among equivariant architectures, higher-order representations translate to better scaling exponents. Our analysis also suggests that for compute-optimal training, the data and model sizes should scale in tandem regardless of the architecture. At a high level, these results suggest that, contrary to common belief, we should not leave it to the model to discover fundamental inductive biases such as symmetry, especially as we scale, because they change the inherent difficulty of the task and its scaling laws.
fields
physics.chem-ph 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Approximate Label Symmetries Improve Data Scaling
Approximate label symmetries improve scaling laws for ML models of hydrogen orbital densities, water vibrational modes, and 3D potential energy surfaces, with a Hessian correction for approximate cases.