Phases of two-dimensional spinless lattice fermions with first-quantized
deep neural-network quantum states
- URL: http://arxiv.org/abs/2008.00118v1
- Date: Fri, 31 Jul 2020 23:43:52 GMT
- Title: Phases of two-dimensional spinless lattice fermions with first-quantized
deep neural-network quantum states
- Authors: James Stokes, Javier Robledo Moreno, Eftychios A. Pnevmatikakis,
Giuseppe Carleo
- Abstract summary: First-quantized deep neural network techniques are developed for analyzing strongly coupled fermionic systems on the lattice.
We use a Slater-Jastrow inspired ansatz which exploits deep residual networks with convolutional residual blocks.
The flexibility of the neural-network ansatz results in a high level of accuracy when compared to exact diagonalization results on small systems.
- Score: 3.427639528860287
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: First-quantized deep neural network techniques are developed for analyzing
strongly coupled fermionic systems on the lattice. Using a Slater-Jastrow
inspired ansatz which exploits deep residual networks with convolutional
residual blocks, we approximately determine the ground state of spinless
fermions on a square lattice with nearest-neighbor interactions. The
flexibility of the neural-network ansatz results in a high level of accuracy
when compared to exact diagonalization results on small systems, both for
energy and correlation functions. On large systems, we obtain accurate
estimates of the boundaries between metallic and charge ordered phases as a
function of the interaction strength and the particle density.
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