Neural network approach to quasiparticle dispersions in doped
antiferromagnets
- URL: http://arxiv.org/abs/2310.08578v1
- Date: Thu, 12 Oct 2023 17:59:33 GMT
- Title: Neural network approach to quasiparticle dispersions in doped
antiferromagnets
- Authors: Hannah Lange, Fabian D\"oschl, Juan Carrasquilla, Annabelle Bohrdt
- Abstract summary: We study the ability of neural quantum states to represent the bosonic and fermionic $t-J$ model on different 1D and 2D lattices.
We present a method to calculate dispersion relations from the neural network state representation.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Numerically simulating spinful, fermionic systems is of great interest from
the perspective of condensed matter physics. However, the exponential growth of
the Hilbert space dimension with system size renders an exact parameterization
of large quantum systems prohibitively demanding. This is a perfect playground
for neural networks, owing to their immense representative power that often
allows to use only a fraction of the parameters that are needed in exact
methods. Here, we investigate the ability of neural quantum states (NQS) to
represent the bosonic and fermionic $t-J$ model - the high interaction limit of
the Fermi-Hubbard model - on different 1D and 2D lattices. Using autoregressive
recurrent neural networks (RNNs) with 2D tensorized gated recurrent units, we
study the ground state representations upon doping the half-filled system with
holes. Moreover, we present a method to calculate dispersion relations from the
neural network state representation, applicable to any neural network
architecture and any lattice geometry, that allows to infer the low-energy
physics from the NQS. To demonstrate our approach, we calculate the dispersion
of a single hole in the $t-J$ model on different 1D and 2D square and
triangular lattices. Furthermore, we analyze the strengths and weaknesses of
the RNN approach for fermionic systems, pointing the way for an accurate and
efficient parameterization of fermionic quantum systems using neural quantum
states.
Related papers
- Fourier Neural Operators for Learning Dynamics in Quantum Spin Systems [77.88054335119074]
We use FNOs to model the evolution of random quantum spin systems.
We apply FNOs to a compact set of Hamiltonian observables instead of the entire $2n$ quantum wavefunction.
arXiv Detail & Related papers (2024-09-05T07:18:09Z) - Capturing dynamical correlations using implicit neural representations [85.66456606776552]
We develop an artificial intelligence framework which combines a neural network trained to mimic simulated data from a model Hamiltonian with automatic differentiation to recover unknown parameters from experimental data.
In doing so, we illustrate the ability to build and train a differentiable model only once, which then can be applied in real-time to multi-dimensional scattering data.
arXiv Detail & Related papers (2023-04-08T07:55:36Z) - PAC-NeRF: Physics Augmented Continuum Neural Radiance Fields for
Geometry-Agnostic System Identification [64.61198351207752]
Existing approaches to system identification (estimating the physical parameters of an object) from videos assume known object geometries.
In this work, we aim to identify parameters characterizing a physical system from a set of multi-view videos without any assumption on object geometry or topology.
We propose "Physics Augmented Continuum Neural Radiance Fields" (PAC-NeRF), to estimate both the unknown geometry and physical parameters of highly dynamic objects from multi-view videos.
arXiv Detail & Related papers (2023-03-09T18:59:50Z) - Towards Neural Variational Monte Carlo That Scales Linearly with System
Size [67.09349921751341]
Quantum many-body problems are central to demystifying some exotic quantum phenomena, e.g., high-temperature superconductors.
The combination of neural networks (NN) for representing quantum states, and the Variational Monte Carlo (VMC) algorithm, has been shown to be a promising method for solving such problems.
We propose a NN architecture called Vector-Quantized Neural Quantum States (VQ-NQS) that utilizes vector-quantization techniques to leverage redundancies in the local-energy calculations of the VMC algorithm.
arXiv Detail & Related papers (2022-12-21T19:00:04Z) - Supplementing Recurrent Neural Network Wave Functions with Symmetry and
Annealing to Improve Accuracy [0.7234862895932991]
Recurrent neural networks (RNNs) are a class of neural networks that have emerged from the paradigm of artificial intelligence.
We show that our method is superior to Density Matrix Renormalisation Group (DMRG) for system sizes larger than or equal to $14 times 14$ on the triangular lattice.
arXiv Detail & Related papers (2022-07-28T18:00:03Z) - Neural network enhanced measurement efficiency for molecular
groundstates [63.36515347329037]
We adapt common neural network models to learn complex groundstate wavefunctions for several molecular qubit Hamiltonians.
We find that using a neural network model provides a robust improvement over using single-copy measurement outcomes alone to reconstruct observables.
arXiv Detail & Related papers (2022-06-30T17:45:05Z) - Variational learning of quantum ground states on spiking neuromorphic
hardware [0.0]
High-dimensional sampling spaces and transient autocorrelations confront neural networks with a challenging computational bottleneck.
Compared to conventional neural networks, physical-model devices offer a fast, efficient and inherently parallel substrate.
We demonstrate the ability of a neuromorphic chip to represent the ground states of quantum spin models by variational energy minimization.
arXiv Detail & Related papers (2021-09-30T14:39:45Z) - Gauge Invariant and Anyonic Symmetric Transformer and RNN Quantum States for Quantum Lattice Models [16.987004075528606]
We develop a general approach to constructing gauge invariant or anyonic symmetric autoregressive neural network quantum states.
We prove that our methods can provide exact representation for the ground and excited states of the 2D and 3D toric codes.
We variationally optimize our symmetry incorporated autoregressive neural networks for ground states as well as real-time dynamics for a variety of models.
arXiv Detail & Related papers (2021-01-18T18:55:21Z) - Random Sampling Neural Network for Quantum Many-Body Problems [0.0]
We propose a general numerical method, Random Sampling Neural Networks (RSNN), to utilize the pattern recognition technique for the random sampling matrix elements of an interacting many-body system via a self-supervised learning approach.
Several exactly solvable 1D models, including Ising model with transverse field, Fermi-Hubbard model, and spin-$1/2$ $XXZ$ model, are used to test the applicability of RSNN.
arXiv Detail & Related papers (2020-11-10T15:52:44Z) - Variational Monte Carlo calculations of $\mathbf{A\leq 4}$ nuclei with
an artificial neural-network correlator ansatz [62.997667081978825]
We introduce a neural-network quantum state ansatz to model the ground-state wave function of light nuclei.
We compute the binding energies and point-nucleon densities of $Aleq 4$ nuclei as emerging from a leading-order pionless effective field theory Hamiltonian.
arXiv Detail & Related papers (2020-07-28T14:52:28Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.