Generative Neural Samplers for the Quantum Heisenberg Chain
- URL: http://arxiv.org/abs/2012.10264v1
- Date: Fri, 18 Dec 2020 14:28:13 GMT
- Title: Generative Neural Samplers for the Quantum Heisenberg Chain
- Authors: Johanna Vielhaben, Nils Strodthoff
- Abstract summary: Generative neural samplers offer a complementary approach to Monte Carlo methods for problems in statistical physics and quantum field theory.
This work tests the ability of generative neural samplers to estimate observables for real-world low-dimensional spin systems.
- Score: 0.3655021726150368
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Generative neural samplers offer a complementary approach to Monte Carlo
methods for problems in statistical physics and quantum field theory. This work
tests the ability of generative neural samplers to estimate observables for
real-world low-dimensional spin systems. It maps out how autoregressive models
can sample configurations of a quantum Heisenberg chain via a classical
approximation based on the Suzuki-Trotter transformation. We present results
for energy, specific heat and susceptibility for the isotropic XXX and the
anisotropic XY chain that are in good agreement with Monte Carlo results within
the same approximation scheme.
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