Auto-regressive Neural Quantum State Sampling for Selected Configuration Interaction
Abstract
Accurate ground-state energy calculations remain a central challenge in quantum chemistry due to the exponential scaling of the many-body Hilbert space. Variational Monte Carlo and variational quantum eigensolvers offer promising ansatz optimization approaches but face limitations in convergence as well as hardware constraints. We introduce a particular Selected Configuration Interaction (SCI) algorithm that uses auto-regressive neural networks (ARNNs) to guide subspace expansion for ground-state search. Leveraging the unique properties of ARNNs, our algorithm efficiently constructs compact variational subspaces from learned ground-state statistics, which in turn accelerates convergence to the ground-state energy. Benchmarks on molecular systems demonstrate that ARNN-guided subspace expansion combines the strengths of neural-network representations and classical subspace methods, providing a scalable framework for classical and hybrid quantum-classical algorithms.
Cite
@article{arxiv.2603.24728,
title = {Auto-regressive Neural Quantum State Sampling for Selected Configuration Interaction},
author = {Shane Thompson and Daniel Gunlycke},
journal= {arXiv preprint arXiv:2603.24728},
year = {2026}
}
Comments
26 pages, 13 figures, 1 table