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Iterative quantum optimization with an adaptive problem Hamiltonian for the shortest vector problem

Y. Zhu, David Joseph, Congli Ling, F. Mintert·April 28, 2022·DOI: 10.1103/PhysRevA.106.022435
Physics

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Abstract

Quantum optimization algorithms hold the promise of solving classically hard, discrete optimization problems in practice. The requirement of encoding such problems in a Hamiltonian realized with a finite -- and currently small -- number of qubits, however, poses the risk of finding only the optimum within the restricted space supported by this Hamiltonian. We describe an iterative algorithm in which a solution obtained with such a restricted problem Hamiltonian is used to define a new problem Hamiltonian that is better suited than the previous one. In numerical examples of the shortest vector problem, we show that the algorithm with a sequence of improved problem Hamiltonians converges to the desired solution.

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