English

Solving graph problems using permutation-invariant quantum machine learning

Quantum Physics 2025-05-21 v2

Abstract

Many computational problems are unchanged under some symmetry operation. In classical machine learning, this can be reflected with the layer structure of the neural network. In quantum machine learning, the ansatz can be tuned to correspond to the specific symmetry of the problem. We investigate this adaption of the quantum circuit to the problem symmetry on graph classification problems. On random graphs, the quantum machine learning ansatz classifies whether a given random graph is connected, bipartite, contains a Hamiltonian path or cycle, respectively. We find that if the quantum circuit reflects the inherent symmetry of the problem, it vastly outperforms the standard, unsymmetrized ansatzes. Even when the symmetry is only approximative, there is still a significant performance gain over non-symmetrized ansatzes. We show how the symmetry can be included in the quantum circuit in a straightforward constructive method.

Keywords

Cite

@article{arxiv.2505.12764,
  title  = {Solving graph problems using permutation-invariant quantum machine learning},
  author = {Maximilian Balthasar Mansky and Tobias Rohe and Gerhard Stenzel and Alejandro Bravo de la Serna and Santiago Londoño Castillo and Gautham Sathish and Dimitra Nikolaidou and Dmytro Bondarenko and Linus Menzel and Claudia Linnhoff-Popien},
  journal= {arXiv preprint arXiv:2505.12764},
  year   = {2025}
}

Comments

10 pages, submitted to QCE 25