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Given a renormalization scheme, we show how to formulate a tractable convex relaxation of the set of feasible local density matrices of a many-body quantum system. The relaxation is obtained by introducing a hierarchy of constraints between the reduced states of ever-growing sets of lattice sites. The coarse-graining maps of the underlying renormalization procedure serve to eliminate a vast number of those constraints, such that the remaining ones can be enforced with reasonable computational means. This process can be used to obtain rigorous lower bounds on the ground-state energy of arbitrary local Hamiltonians by performing a linear optimization over the resulting convex relaxation of reduced quantum states. The quality of the bounds crucially depends on the particular renormalization scheme, which must be tailored to the target Hamiltonian. We apply our method to 1D translation-invariant spin models, obtaining energy bounds comparable to those attained by optimizing over locally translation-invariant states of n≳100 spins. Beyond this demonstration, the general method can be applied to a wide range of other problems, such as spin systems in higher spatial dimensions, electronic structure problems, and various other many-body optimization problems, such as entanglement and nonlocality detection. Published by the American Physical Society 2024
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Ilya Kull
University of Vienna
Norbert Schuch
University of Vienna
Benjamin Dive
Austrian Academy of Sciences
Physical Review X
University of Vienna
Austrian Academy of Sciences
Institute for Quantum Optics and Quantum Information Innsbruck
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Kull et al. (Tue,) studied this question.
synapsesocial.com/papers/68e6fca8b6db6435876765df — DOI: https://doi.org/10.1103/physrevx.14.021008