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Evolving Hard Maximum Cut Instances for Quantum Approximate Optimization Algorithms

Emerging Technologies 2025-06-04 v3 Artificial Intelligence Neural and Evolutionary Computing Quantum Physics

Abstract

Variational quantum algorithms, such as the Recursive Quantum Approximate Optimization Algorithm (RQAOA), have become increasingly popular, offering promising avenues for employing Noisy Intermediate-Scale Quantum devices to address challenging combinatorial optimization tasks like the maximum cut problem. In this study, we utilize an evolutionary algorithm equipped with a unique fitness function. This approach targets hard maximum cut instances within the latent space of a Graph Autoencoder, identifying those that pose significant challenges or are particularly tractable for RQAOA, in contrast to the classic Goemans and Williamson algorithm. Our findings not only delineate the distinct capabilities and limitations of each algorithm but also expand our understanding of RQAOA's operational limits. Furthermore, the diverse set of graphs we have generated serves as a crucial benchmarking asset, emphasizing the need for more advanced algorithms to tackle combinatorial optimization challenges. Additionally, our results pave the way for new avenues in graph generation research, offering exciting opportunities for future explorations.

Keywords

Cite

@article{arxiv.2502.12012,
  title  = {Evolving Hard Maximum Cut Instances for Quantum Approximate Optimization Algorithms},
  author = {Shuaiqun Pan and Yash J. Patel and Aneta Neumann and Frank Neumann and Thomas Bäck and Hao Wang},
  journal= {arXiv preprint arXiv:2502.12012},
  year   = {2025}
}

Comments

This work has been accepted for publication and presentation at GECCO 2025