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Article Dans Une Revue Quantum Science and Technology Année : 2022

On constant-time quantum annealing and guaranteed approximations for graph optimization problems

Résumé

Abstract Quantum annealing (QA) is a computational framework where a quantum system’s continuous evolution is used to find the global minimum of an objective function over an unstructured search space. It can be seen as a general metaheuristic for optimization problems, including NP-hard ones if we allow an exponentially large running time. While QA is widely studied from a heuristic point of view, little is known about theoretical guarantees on the quality of the solutions obtained in polynomial time. In this paper, we use a technique borrowed from theoretical physics, the Lieb–Robinson (LR) bound, and develop new tools proving that short, constant-time QA guarantees constant factor approximations ratios for some optimization problems when restricted to bounded degree graphs. Informally, on bounded degree graphs the LR bound allows us to retrieve a (relaxed) locality argument, through which the approximation ratio can be deduced by studying subgraphs of bounded radius. We illustrate our tools on problems MaxCut and maximum independent set for cubic graphs, providing explicit approximation ratios and the runtimes needed to obtain them. Our results are of similar flavor to the well-known ones obtained in the different but related QAOA (quantum optimization algorithms) framework.

Dates et versions

hal-03927581 , version 1 (06-01-2023)

Identifiants

Citer

Arthur Braida, Simon Martiel, Ioan Todinca. On constant-time quantum annealing and guaranteed approximations for graph optimization problems. Quantum Science and Technology, 2022, 7 (4), pp.045030. ⟨10.1088/2058-9565/ac8e91⟩. ⟨hal-03927581⟩
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