An unsupervised ANN algorithm finds ground states of 1D Ising and Heisenberg models matching exact diagonalization results.
Finding Quantum Many-Body Ground States with Artificial Neural Network
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abstract
Solving ground states of quantum many-body systems has been a long-standing problem in condensed matter physics. Here, we propose a new unsupervised machine learning algorithm to find the ground state of a general quantum many-body system utilizing the benefits of artificial neural network. Without assuming the specific forms of the eigenvectors, this algorithm can find the eigenvectors in an unbiased way with well controlled accuracy. As examples, we apply this algorithm to 1D Ising and Heisenberg models, where the results match very well with exact diagonalization.
fields
cond-mat.dis-nn 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
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Finding Quantum Many-Body Ground States with Artificial Neural Network
An unsupervised ANN algorithm finds ground states of 1D Ising and Heisenberg models matching exact diagonalization results.