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Computational Complexity of Quadratic Unconstrained Binary Optimization

(2109.10048)
Published Sep 21, 2021 in cs.CC and math.OC

Abstract

In this paper, we study the computational complexity of the quadratic unconstrained binary optimization (QUBO) problem under the functional problem FPNP categorization. We focus on four sub-classes: (1) When all coefficients are integers QUBO is FPNP-complete. (2) When every coefficient is an integer lower bounded by a constant k, QUBO is FPNP[log]-complete. (3) When every coefficient is an integer upper bounded by a constant k, QUBO is again FPNP[log]-complete. (4) When coefficients can only be in the set {1, 0, -1}, QUBO is FPNP[log]-complete. With recent results in quantum annealing able to solve QUBO problems efficiently, our results provide a clear connection between quantum annealing algorithms and the FPNP complexity class categorization. We also study the computational complexity of the decision version of the QUBO problem with integer coefficients. We prove that this problem is DP-complete.

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