Universal approach to deterministic spatial search via alternating
quantum walks
- URL: http://arxiv.org/abs/2307.16133v4
- Date: Thu, 24 Aug 2023 02:39:41 GMT
- Title: Universal approach to deterministic spatial search via alternating
quantum walks
- Authors: Qingwen Wang, Ying Jiang, Shiguang Feng, and Lvzhou Li
- Abstract summary: We propose a novel approach for designing deterministic quantum search algorithms on a variety of graphs via alternating quantum walks.
Our approach is universal because it does not require an instance-specific analysis for different graphs.
- Score: 2.940962519388297
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Spatial search is an important problem in quantum computation, which aims to
find a marked vertex on a graph. We propose a novel approach for designing
deterministic quantum search algorithms on a variety of graphs via alternating
quantum walks. Our approach is universal because it does not require an
instance-specific analysis for different graphs. We highlight the flexibility
of our approach by proving that for Johnson graphs, rook graphs,
complete-square graphs and complete bipartite graphs, our quantum algorithms
can find the marked vertex with $100\%$ success probability and achieve
quadratic speedups over classical algorithms. This not only gives an
alternative succinct way to prove the existing results, but also leads to new
interesting findings on more general graphs.
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