Ground States of Quantum Many Body Lattice Models via Reinforcement Learning
Publication date
2020-12-13
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Abstract
We introduce reinforcement learning (RL) formulations of the problem of finding the ground state of a many-body quantum mechanical model defined on a lattice. We show that stoquastic Hamiltonians -- those without a sign problem -- have a natural decomposition into stochastic dynamics and a potential representing a reward function. The mapping to RL is developed for both continuous and discrete time, based on a generalized Feynman--Kac formula in the former case and a stochastic representation of the Schrödinger equation in the latter. We discuss the application of this mapping to the neural representation of quantum states, spelling out the advantages over approaches based on direct representation of the wavefunction of the system.
Keywords
Quantum Mechanics, Feynman–Kac Formula, Optimal Control, Reinforcement Learning
Citation
Gispen, W & Lamacraft, A 2020 'Ground States of Quantum Many Body Lattice Models via Reinforcement Learning' arXiv, pp. 1-17. https://doi.org/10.48550/arXiv.2012.07063