Neural-network Quantum States for Spin-1 systems: spin-basis and
parameterization effects on compactness of representations
- URL: http://arxiv.org/abs/2105.08579v2
- Date: Mon, 19 Jul 2021 11:44:59 GMT
- Title: Neural-network Quantum States for Spin-1 systems: spin-basis and
parameterization effects on compactness of representations
- Authors: Michael Y. Pei, Stephen R. Clark
- Abstract summary: Neural network quantum states (NQS) have been widely applied to spin-1/2 systems where they have proven to be highly effective.
We propose a more direct generalisation of RBMs for spin-1 that retains the key properties of the standard spin-1/2 RBM.
Further to this we investigate how the hidden unit complexity of NQS depend on the local single-spin basis used.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Neural network quantum states (NQS) have been widely applied to spin-1/2
systems where they have proven to be highly effective. The application to
systems with larger on-site dimension, such as spin-1 or bosonic systems, has
been explored less and predominantly using spin-1/2 Restricted Boltzmann
Machines (RBMs) with a one-hot/unary encoding. Here we propose a more direct
generalisation of RBMs for spin-1 that retains the key properties of the
standard spin-1/2 RBM, specifically trivial product states representations,
labelling freedom for the visible variables and gauge equivalence to the tensor
network formulation. To test this new approach we present variational Monte
Carlo (VMC) calculations for the spin-1 antiferromagnetic Heisenberg (AFH)
model and benchmark it against the one-hot/unary encoded RBM demonstrating that
it achieves the same accuracy with substantially fewer variational parameters.
Further to this we investigate how the hidden unit complexity of NQS depend on
the local single-spin basis used. Exploiting the tensor network version of our
RBM we construct an analytic NQS representation of the
Affleck-Kennedy-Lieb-Tasaki (AKLT) state in the $xyz$ spin-1 basis using only
$M = 2N$ hidden units, compared to $M \sim O(N^2)$ required in the $S^z$ basis.
Additional VMC calculations provide strong evidence that the AKLT state in fact
possesses an exact compact NQS representation in the $xyz$ basis with only
$M=N$ hidden units. These insights help to further unravel how to most
effectively adapt the NQS framework for more complex quantum systems.
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