Publication | Open Access
Exponentially Biased Ground-State Sampling of Quantum Annealing Machines with Transverse-Field Driving Hamiltonians
73
Citations
28
References
2017
Year
EngineeringSpin-glass Benchmark InstanceFuture QuantumQuantum ComputingTransverse-field Driving HamiltoniansQuantum Optimization AlgorithmQuantum Machine LearningQuantum EntanglementQuantum AnnealingD-wave 2XQuantum SciencePhysicsQuantum AlgorithmGround-state SamplingNatural SciencesApplied PhysicsCondensed Matter PhysicsQuantum Annealing MachinesQuantum Algorithms
We study the performance of the D-Wave 2X quantum annealing machine on systems with well-controlled ground-state degeneracy. While obtaining the ground state of a spin-glass benchmark instance represents a difficult task, the gold standard for any optimization algorithm or machine is to sample all solutions that minimize the Hamiltonian with more or less equal probability. Our results show that while naive transverse-field quantum annealing on the D-Wave 2X device can find the ground-state energy of the problems, it is not well suited in identifying all degenerate ground-state configurations associated with a particular instance. Even worse, some states are exponentially suppressed, in agreement with previous studies on toy model problems [New J. Phys. 11, 073021 (2009)NJOPFM1367-263010.1088/1367-2630/11/7/073021]. These results suggest that more complex driving Hamiltonians are needed in future quantum annealing machines to ensure a fair sampling of the ground-state manifold.
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