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Revisiting N$_2$ with Neural-Network-Supported CI

Authors :
Schmerwitz, Yorick L. A.
Thirion, Louis
Levi, Gianluca
Jónsson, Elvar Ö.
Bilous, Pavlo
Jónsson, Hannes
Hansmann, Philipp
Publication Year :
2024

Abstract

We apply a recently proposed computational protocol for a neural-network-supported configuration interaction (NN CI) calculation to the paradigmatic N$_2$ molecule. By comparison of correlation energy, binding energy, and the full dissociation curve to experimental and full CI benchmarks, we demonstrate the applicability and robustness of our approach for the first time in the context of molecular systems, and offer thereby a new complementary tool in the family of machine-learning-based computation methods. The main advantage of the method lies in the efficiency of the neural-network-selected many-body basis set. Specifically, we approximate full CI results obtained on bases of $\approx 10^{10}$ Slater Determinants with only $\approx10^{5}$ determinants with good accuracy. The high efficiency of the NN CI approach underlines its potential for broader applications such as structural optimizations and even computation of spectroscopic observables in systems for which computational resources are a limiting factor.<br />Comment: 8 pages, 4 figures

Subjects

Subjects :
Physics - Chemical Physics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.08154
Document Type :
Working Paper