Alleviating the quantum Big-$M$ problem
Abstract
A major obstacle for quantum optimizers is the reformulation of constraints as a quadratic unconstrained binary optimization (QUBO). Current QUBO translators exaggerate the weight of the penalty terms. Classically known as the "Big-" problem, the issue becomes even more daunting for quantum solvers, since it affects the physical energy scale. We take a systematic, encompassing look at the quantum big- problem, revealing NP-hardness in finding the optimal and establishing bounds on the Hamiltonian spectral gap , inversely related to the expected run-time of quantum solvers. We propose a practical translation algorithm, based on SDP relaxation, that outperforms previous methods in numerical benchmarks. Our algorithm gives values of orders of magnitude greater, e.g. for portfolio optimization instances. Solving such instances with an adiabatic algorithm on 6-qubits of an IonQ device, we observe significant advantages in time to solution and average solution quality. Our findings are relevant to quantum and quantum-inspired solvers alike.
Cite
@article{arxiv.2307.10379,
title = {Alleviating the quantum Big-$M$ problem},
author = {Edoardo Alessandroni and Sergi Ramos-Calderer and Ingo Roth and Emiliano Traversi and Leandro Aolita},
journal= {arXiv preprint arXiv:2307.10379},
year = {2025}
}
Comments
13 pages, 4 figures