Improving the performance of fermionic neural networks with the Slater
exponential Ansatz
- URL: http://arxiv.org/abs/2202.10126v2
- Date: Mon, 14 Aug 2023 13:22:42 GMT
- Title: Improving the performance of fermionic neural networks with the Slater
exponential Ansatz
- Authors: Denis Bokhan, Aleksey S. Boev, Aleksey K. Fedorov, Dmitrii N.
Trubnikov
- Abstract summary: We propose a technique for the use of fermionic neural networks (FermiNets) with the Slater exponential Ansatz for electron-nuclear and electron-electron distances.
- Score: 0.351124620232225
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this work, we propose a technique for the use of fermionic neural networks
(FermiNets) with the Slater exponential Ansatz for electron-nuclear and
electron-electron distances, which provides faster convergence of target
ground-state energies due to a better description of the interparticle
interaction in the vicinities of the coalescence points. Analysis of learning
curves indicates on the possibility to obtain accurate energies with smaller
batch sizes using arguments of the bagging approach. In order to obtain even
more accurate results for the ground-state energies, we suggest an
extrapolation scheme, which estimates Monte Carlo integrals in the limit of an
infinite number of points. Numerical tests for a set of molecules demonstrate a
good agreement with the results of original FermiNets (achieved with larger
batch sizes than required by our approach) and with results of coupled-cluster
singles and doubles with perturbative triples (CCSD(T)) method, calculated in
the complete basis set (CBS) limit.
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