Abstract
AbstractFinding the ground state of a quantum many-body system is a fundamental problem in quantum physics. In this work, we give a classical machine learning (ML) algorithm for predicting ground state properties with an inductive bias encoding geometric locality. The proposed ML model can efficiently predict ground state properties of an n-qubit gapped local Hamiltonian after learning from only $${{{{{{{\mathcal{O}}}}}}}}(\log (n))$$
O
(
log
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n
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data about other Hamiltonians in the same quantum phase of matter. This improves substantially upon previous results that require $${{{{{{{\mathcal{O}}}}}}}}({n}^{c})$$
O
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n
c
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data for a large constant c. Furthermore, the training and prediction time of the proposed ML model scale as $${{{{{{{\mathcal{O}}}}}}}}(n\log n)$$
O
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n
log
n
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in the number of qubits n. Numerical experiments on physical systems with up to 45 qubits confirm the favorable scaling in predicting ground state properties using a small training dataset.
Publisher
Springer Science and Business Media LLC
Cited by
11 articles.
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