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arxiv: 1903.07600 · v2 · pith:7CVEY3RUnew · submitted 2019-03-18 · ❄️ cond-mat.dis-nn · quant-ph

Fair sampling of ground-state configurations of binary optimization problems

classification ❄️ cond-mat.dis-nn quant-ph
keywords problemsbinarydegenerateoptimizationquantumannealingapproachbeen
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Although many efficient heuristics have been developed to solve binary optimization problems, these typically produce correlated solutions for degenerate problems. Most notably, transverse-field quantum annealing - the heuristic employed in current commercially-available quantum annealing machines - has been shown to often be exponentially biased when sampling the solution space. Here we present an approach to sample ground-state (or low-energy) configurations for binary optimization problems. The method samples degenerate states with almost equal probability and is based on a combination of parallel tempering Monte Carlo with isoenergetic cluster moves. We illustrate the approach using two-dimensional Ising spin glasses, as well as spin glasses on the D-Wave Systems Inc. quantum annealer chimera topology. In addition, a simple heuristic to approximate the number of solutions of a degenerate problem is introduced.

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