Supervised learning in Hamiltonian reconstruction from local measurements on eigenstates

Author:

Cao ChenfengORCID,Hou Shi-YaoORCID,Cao Ningping,Zeng BeiORCID

Abstract

Abstract Reconstructing a system Hamiltonian through measurements on its eigenstates is an important inverse problem in quantum physics. Recently, it was shown that generic many-body local Hamiltonians can be recovered by local measurements without knowing the values of the correlation functions. In this work, we discuss this problem in more depth for different systems and apply supervised learning method via neural networks to solve it. For low-lying eigenstates, the inverse problem is well-posed, neural networks turn out to be efficient and scalable even with a shallow network and a small data set. For middle-lying eigenstates, the problem is ill-posed, we present a modified method based on transfer learning accordingly. Neural networks can also efficiently generate appropriate initial points for numerical optimization based on the BFGS method.

Publisher

IOP Publishing

Subject

Condensed Matter Physics,General Materials Science

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