An adiabatic quantum algorithm is essentially given by three elements: An initial Hamiltonian with known ground state, a problem Hamiltonian whose ground state corresponds to the solution of the given problem, and an evolution schedule such that the adiabatic condition is satisfied. A correct choice of these elements is crucial for an efficient adiabatic quantum computation. In this paper, we propose a hybrid quantum-classical algorithm that, by solving optimization problems with an adiabatic machine, determines a problem Hamiltonian assuming restrictions on the class of available problem Hamiltonians. The scheme is based on repeated calls to the quantum machine into a classical iterative structure. In particular, we suggest a technique to estimate the encoding of a given optimization problem into a problem Hamiltonian and we prove the convergence of the algorithm.

Learning adiabatic quantum algorithms over optimization problems / Pastorello, Davide; Blanzieri, Enrico; Cavecchia, Valter. - In: QUANTUM MACHINE INTELLIGENCE. - ISSN 2524-4906. - 3:1(2021), pp. 2.1-2.19. [10.1007/s42484-020-00030-w]

Learning adiabatic quantum algorithms over optimization problems

Pastorello, Davide;Blanzieri, Enrico;Cavecchia Valter
2021-01-01

Abstract

An adiabatic quantum algorithm is essentially given by three elements: An initial Hamiltonian with known ground state, a problem Hamiltonian whose ground state corresponds to the solution of the given problem, and an evolution schedule such that the adiabatic condition is satisfied. A correct choice of these elements is crucial for an efficient adiabatic quantum computation. In this paper, we propose a hybrid quantum-classical algorithm that, by solving optimization problems with an adiabatic machine, determines a problem Hamiltonian assuming restrictions on the class of available problem Hamiltonians. The scheme is based on repeated calls to the quantum machine into a classical iterative structure. In particular, we suggest a technique to estimate the encoding of a given optimization problem into a problem Hamiltonian and we prove the convergence of the algorithm.
2021
1
Pastorello, Davide; Blanzieri, Enrico; Cavecchia, Valter
Learning adiabatic quantum algorithms over optimization problems / Pastorello, Davide; Blanzieri, Enrico; Cavecchia, Valter. - In: QUANTUM MACHINE INTELLIGENCE. - ISSN 2524-4906. - 3:1(2021), pp. 2.1-2.19. [10.1007/s42484-020-00030-w]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/280449
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