arXiv Analytics

Sign in

arXiv:2309.13961 [quant-ph]AbstractReferencesReviewsResources

A hybrid quantum-classical approach to warm-starting optimization

Vanessa Dehn, Thomas Wellens

Published 2023-09-25Version 1

The Quantum Approximate Optimization Algorithm (QAOA) is a promising candidate for solving combinatorial optimization problems more efficiently than classical computers. Recent studies have shown that warm-starting the standard algorithm improves the performance. In this paper we compare the performance of standard QAOA with that of warm-start QAOA in the context of portfolio optimization and investigate the warm-start approach for different problem instances. In particular, we analyze the extent to which the improved performance of warm-start QAOA is due to quantum effects, and show that the results can be reproduced or even surpassed by a purely classical preprocessing of the original problem followed by standard QAOA.

Related articles: Most relevant | Search more
arXiv:2006.04831 [quant-ph] (Published 2020-06-08)
Evaluation of Quantum Approximate Optimization Algorithm based on the approximation ratio of single samples
arXiv:1510.03859 [quant-ph] (Published 2015-10-13)
Hybrid quantum-classical approach to correlated materials
arXiv:2105.11946 [quant-ph] (Published 2021-05-25)
Quantum Approximate Optimization Algorithm with Adaptive Bias Fields