Sample-efficient learning of interacting quantum systems

NATURE PHYSICS(2021)

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摘要
Learning the Hamiltonian that describes interactions in a quantum system is an important task in both condensed-matter physics and the verification of quantum technologies. Its classical analogue arises as a central problem in machine learning known as learning Boltzmann machines. Previously, the best known methods for quantum Hamiltonian learning with provable performance guarantees required a number of measurements that scaled exponentially with the number of particles. Here we prove that only a polynomial number of local measurements on the thermal state of a quantum system are necessary and sufficient for accurately learning its Hamiltonian. We achieve this by establishing that the absolute value of the finite-temperature free energy of quantum many-body systems is strongly convex with respect to the interaction coefficients. The framework introduced in our work provides a theoretical foundation for applying machine learning techniques to quantum Hamiltonian learning, achieving a long-sought goal in quantum statistical learning.
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关键词
Condensed-matter physics,Information theory and computation,Quantum information,Physics,general,Theoretical,Mathematical and Computational Physics,Classical and Continuum Physics,Atomic,Molecular,Optical and Plasma Physics,Condensed Matter Physics,Complex Systems
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