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Projected Hessian Learning: Fast Curvature Supervision for Accurate Machine-Learning Interatomic Potentials

Chemical Physics 2026-03-06 v1 Artificial Intelligence Machine Learning

Abstract

The Hessian matrix (second derivatives) encodes far richer local curvature of the potential energy surface than energies and forces alone. However, training machine-learning interatomic potentials (MLIPs) with full Hessians is often impractical because explicitly forming and storing Hessian matrices scales quadratically in cost and memory. We introduce Projected Hessian Learning (PHL), a scalable second-order training framework that injects curvature information using only Hessian-vector products (HVPs). Rather than constructing the Hessian, PHL projects curvature along stochastic probe directions and uses an unbiased stochastic trace-based loss with favorable system-size scaling, enabling curvature-informed training without quadratic memory growth. We benchmark PHL on a chemically diverse dataset of reactants, products, transition states, intrinsic reaction coordinates, and normal-mode sampled geometries computed at omegaB97XD/6-31G(d). We compare energy-force training (E-F), two HVP-based schemes (E-F-HVP with one-hot or randomized probes), and full energy-force-Hessian training (E-F-H). With randomized probes per minibatch, both HVP schemes match full-Hessian training in energy, force, and Hessian accuracy while delivering >24x epoch speedups for the small molecular systems studied. In a fixed-probe regime with one HVP per molecule, randomized projections consistently outperform one-column probing, especially for far-from-equilibrium geometries. Overall, PHL replaces explicit Hessian supervision with force-complexity curvature training, retaining most second-order accuracy gains while scaling to larger, more complex molecular systems.

Keywords

Cite

@article{arxiv.2603.04523,
  title  = {Projected Hessian Learning: Fast Curvature Supervision for Accurate Machine-Learning Interatomic Potentials},
  author = {Austin Rodriguez and Justin S. Smith and Sakib Matin and Nicholas Lubbers and Kipton Barros and Jose L. Mendoza-Cortes},
  journal= {arXiv preprint arXiv:2603.04523},
  year   = {2026}
}

Comments

30 pages, 5 figures, 6 suplementary figures

R2 v1 2026-07-01T11:03:50.531Z