3 research outputs found

    Neural network quantum states analysis of the Shastry-Sutherland model

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    We utilize neural network quantum states (NQS) to investigate the ground state properties of the Heisenberg model on a Shastry-Sutherland lattice using the variational Monte Carlo method. We show that already relatively simple NQSs can be used to approximate the ground state of this model in its different phases and regimes. We first compare several types of NQSs with each other on small lattices and benchmark their variational energies against the exact diagonalization results. We argue that when precision, generality, and computational costs are taken into account, a good choice for addressing larger systems is a shallow restricted Boltzmann machine NQS. We then show that such NQS can describe the main phases of the model in zero magnetic field. Moreover, NQS based on a restricted Boltzmann machine correctly describes the intriguing plateaus forming in magnetization of the model as a function of increasing magnetic field

    TORSCHE Scheduling Toolbox for Matlab User’s Guide (Release 0.4.0) TORSCHE Scheduling Toolbox for Matlab User’s Guide

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    Permission is granted to make and distribute verbatim copies of this User’s Guide provided the copyright notice and this permission notice are preserved on all copies. Permission is granted to copy and distribute modified versions of this User’s Guide under the conditions for verbatim copying, provided also that the entire resulting derived work is distributed under the terms of a permission notice identical to this one. Permission is granted to copy and distribute translations of this User’s Guide into another language, under the above conditions for modified versions
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