Neural Quantum States Based on Selected Configurations
Marco Julian Solanki, Lexin Ding, and Markus Reiher

TL;DR
This paper compares neural quantum state methods, showing that selected configuration approaches outperform variational Monte Carlo in accuracy and robustness for static correlation in electronic ground states.
Contribution
It introduces and systematically evaluates NQS-SC, demonstrating its advantages over NQS-VMC for electronic structure calculations, especially in static correlation regimes.
Findings
NQS-SC outperforms NQS-VMC in energy accuracy
NQS-SC shows robust systematic improvability
Neither method captures dynamical correlation efficiently
Abstract
Neural quantum states (NQS) provide a flexible and highly expressive parameterization of wave functions for strongly correlated problems in quantum chemistry. Despite rapid advances in network architectures, the evaluation of electronic energies remains almost exclusively based on variational Monte Carlo (VMC). While VMC is effective for structured systems such as spin chains, its accuracy and efficiency for electronic Hamiltonians are hindered by sharply peaked distributions, stochastic gradient noise, and slow convergence with sample size. In this letter, we assess the capability of NQS-VMC to efficiently capture correlation in electronic ground states by comparing it to a recently developed NQS-based selected configuration (NQS-SC) approach. We set up a systematic comparison of the ground-state optimizations obtained with NQS-VMC and NQS-SC for molecular systems dominated by either…
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Taxonomy
TopicsQuantum many-body systems · Quantum Computing Algorithms and Architecture · Spectroscopy and Quantum Chemical Studies
