AI RESEARCH
Physics-Informed Long-Range Coulomb Correction for Machine-learning Hamiltonians
arXiv CS.AI
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ArXi:2603.20007v1 Announce Type: cross Machine-learning electronic Hamiltonians achieve orders-of-magnitude speedups over density-functional theory, yet current models omit long-range Coulomb interactions that govern physics in polar crystals and heterostructures. We derive closed-form long-range Hamiltonian matrix elements in a nonorthogonal atomic-orbital basis through variational decomposition of the electrostatic energy, deriving a variationally consistent mapping from the electron density matrix to effective atomic charges.