Machine learning one-dimensional spinless trapped fermionic systems with
neural-network quantum states
- URL: http://arxiv.org/abs/2304.04725v2
- Date: Thu, 8 Feb 2024 17:53:59 GMT
- Title: Machine learning one-dimensional spinless trapped fermionic systems with
neural-network quantum states
- Authors: J. W. T. Keeble, M. Drissi, A. Rojo-Franc\`as, B. Juli\'a-D\'iaz, A.
Rios
- Abstract summary: We compute the ground-state properties of fully polarized, trapped, one-dimensional fermionic systems interacting through a gaussian potential.
We use an antisymmetric artificial neural network, or neural quantum state, as an ansatz for the wavefunction.
We find very different ground states depending on the sign of the interaction.
- Score: 1.6606527887256322
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We compute the ground-state properties of fully polarized, trapped,
one-dimensional fermionic systems interacting through a gaussian potential. We
use an antisymmetric artificial neural network, or neural quantum state, as an
ansatz for the wavefunction and use machine learning techniques to
variationally minimize the energy of systems from 2 to 6 particles. We provide
extensive benchmarks with other many-body methods, including exact
diagonalisation and the Hartree-Fock approximation. The neural quantum state
provides the best energies across a wide range of interaction strengths. We
find very different ground states depending on the sign of the interaction. In
the non-perturbative repulsive regime, the system asymptotically reaches
crystalline order. In contrast, the strongly attractive regime shows signs of
bosonization. The neural quantum state continuously learns these different
phases with an almost constant number of parameters and a very modest increase
in computational time with the number of particles.
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