Quantum Subroutines in Branch-Price-and-Cut for Vehicle Routing
Friedrich Wagner, Frauke Liers

TL;DR
This paper explores integrating quantum heuristics into classical optimization algorithms for vehicle routing, demonstrating potential benefits as quantum hardware advances, despite current limitations.
Contribution
It models subproblems in a branch-price-and-cut algorithm as quadratic unconstrained binary optimization problems to incorporate quantum heuristics.
Findings
Quantum heuristics can be integrated into large-scale exact algorithms.
Current quantum methods are outperformed by classical algorithms.
Future hardware improvements could enhance quantum heuristic effectiveness.
Abstract
Motivated by recent progress in quantum hardware and algorithms researchers have developed quantum heuristics for optimization problems, aiming for advantages over classical methods. To date, quantum hardware is still error-prone and limited in size such that quantum heuristics cannot be scaled to relevant problem sizes and are often outperformed by their classical counterparts. Moreover, if provably optimal solutions are desired, one has to resort to classical exact methods. As however quantum technologies may improve considerably in future, we demonstrate in this work how quantum heuristics with limited resources can be integrated in large-scale exact optimization algorithms for NP-hard problems. To this end, we consider vehicle routing as prototypical NP-hard problem. We model the pricing and separation subproblems arising in a branch-price-and-cut algorithm as quadratic…
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