Publication | Open Access
Different Strategies for Optimization Using the Quantum Adiabatic Algorithm
69
Citations
6
References
2014
Year
Quantum ScienceDifferent StrategiesEngineeringQuantum ComputingPhysicsQuantum Adiabatic AlgorithmNatural SciencesQuantum Machine LearningQuantum Optimization AlgorithmQuantum AlgorithmQuantum InformationUnique AssignmentComputational ComplexityQuantum EntanglementQuantum EvolutionQuantum Algorithms
We present the results of a numerical study, with 20 qubits, of the performance of the Quantum Adiabatic Algorithm on randomly generated instances of MAX 2-SAT with a unique assignment that maximizes the number of satisfied clauses. The probability of obtaining this assignment at the end of the quantum evolution measures the success of the algorithm. Here we report three strategies which consistently increase the success probability for the hardest instances in our ensemble: decreasing the overall evolution time, initializing the system in excited states, and adding a random local Hamiltonian to the middle of the evolution.
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