Solving and visualizing fractional quantum Hall wavefunctions with neural network
We introduce an attention-based fermionic neural network (FNN) to variationally solve the problem of two-dimensional Coulomb electron gas in magnetic fields, a canonical platform for fractional quantum Hall (FQH) liquids, Wigner crystals and other unconventional electron states. Working directly wit...
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Zusammenfassung: | We introduce an attention-based fermionic neural network (FNN) to
variationally solve the problem of two-dimensional Coulomb electron gas in
magnetic fields, a canonical platform for fractional quantum Hall (FQH)
liquids, Wigner crystals and other unconventional electron states. Working
directly with the full Hilbert space of $N$ electrons confined to a disk, our
FNN consistently attains energies lower than LL-projected exact diagonalization
(ED) and learns the ground state wavefunction to high accuracy. In low LL
mixing regime, our FNN reveals microscopic features in the short-distance
behavior of FQH wavefunction beyond the Laughlin ansatz. For moderate and
strong LL mixing parameters, the FNN outperforms ED significantly. Moreover, a
phase transition from FQH liquid to a crystal state is found at strong LL
mixing. Our study demonstrates unprecedented power and universality of FNN
based variational method for solving strong-coupling many-body problems with
topological order and electron fractionalization. |
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DOI: | 10.48550/arxiv.2412.00618 |