Quantum algorithms for hypergraph simplex finding
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- hypergraphs can be turned into a faster algorithm for finding simplices in rank- 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 -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 -simplex finding, we use our new technique to obtain an algorithm for -simplex finding in rank- hypergraphs with quantum query cost, improving the trivial algorithm.
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}
}
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31 pages