English

Quantum algorithms for hypergraph simplex finding

Quantum Physics 2024-09-04 v1

Abstract

We study the quantum query algorithms for simplex finding, a generalization of triangle finding to hypergraphs. This problem satisfies a rank-reduction property: a quantum query algorithm for finding simplices in rank-rr hypergraphs can be turned into a faster algorithm for finding simplices in rank-(r1)(r-1) hypergraphs. We then show that every nested Johnson graph quantum walk (with any constant number of nested levels) can be converted into an adaptive learning graph. Then, we introduce the concept of α\alpha-symmetric learning graphs, which is a useful framework for designing and analyzing complex quantum search algorithms. Inspired by the work of Le Gall, Nishimura, and Tani (2016) on 33-simplex finding, we use our new technique to obtain an algorithm for 44-simplex finding in rank-44 hypergraphs with O(n2.46)O(n^{2.46}) quantum query cost, improving the trivial O(n2.5)O(n^{2.5}) algorithm.

Keywords

Cite

@article{arxiv.2409.00239,
  title  = {Quantum algorithms for hypergraph simplex finding},
  author = {Zhiying Yu and Shalev Ben-David},
  journal= {arXiv preprint arXiv:2409.00239},
  year   = {2024}
}

Comments

31 pages