Tabu-driven Quantum Neighborhood Samplers
Abstract
Combinatorial optimization is an important application targeted by quantum computing. However, near-term hardware constraints make quantum algorithms unlikely to be competitive when compared to high-performing classical heuristics on large practical problems. One option to achieve advantages with near-term devices is to use them in combination with classical heuristics. In particular, we propose using quantum methods to sample from classically intractable distributions -- which is the most probable approach to attain a true provable quantum separation in the near-term -- which are used to solve optimization problems faster. We numerically study this enhancement by an adaptation of Tabu Search using the Quantum Approximate Optimization Algorithm (QAOA) as a neighborhood sampler. We show that QAOA provides a flexible tool for exploration-exploitation in such hybrid settings and can provide evidence that it can help in solving problems faster by saving many tabu iterations and achieving better solutions.
Cite
@article{arxiv.2011.09508,
title = {Tabu-driven Quantum Neighborhood Samplers},
author = {Charles Moussa and Hao Wang and Henri Calandra and Thomas Bäck and Vedran Dunjko},
journal= {arXiv preprint arXiv:2011.09508},
year = {2021}
}
Comments
Compressed version of the paper with better plots