Near-Optimal Quantum Algorithms for String Problems
Shyan Akmal, Ce Jin

TL;DR
This paper develops near-optimal quantum algorithms for fundamental string problems, significantly improving classical and previous quantum algorithm complexities using advanced quantum techniques.
Contribution
It introduces new quantum algorithms with improved time complexities for Longest Common Substring, Lexicographically Minimal String Rotation, and Longest Square Substring.
Findings
Longest Common Substring solved in $ ilde O(n^{2/3})$ time
Lexicographically Minimal String Rotation in $n^{1/2 + o(1)}$ time
Longest Square Substring in $ ilde O( oot{ }{ } ext{sqrt}(n))$ time
Abstract
We study quantum algorithms for several fundamental string problems, including Longest Common Substring, Lexicographically Minimal String Rotation, and Longest Square Substring. These problems have been widely studied in the stringology literature since the 1970s, and are known to be solvable by near-linear time classical algorithms. In this work, we give quantum algorithms for these problems with near-optimal query complexities and time complexities. Specifically, we show that: - Longest Common Substring can be solved by a quantum algorithm in time, improving upon the recent -time algorithm by Le Gall and Seddighin (2020). Our algorithm uses the MNRS quantum walk framework, together with a careful combination of string synchronizing sets (Kempa and Kociumaka, 2019) and generalized difference covers. - Lexicographically Minimal String Rotation…
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Taxonomy
TopicsAlgorithms and Data Compression · Quantum Computing Algorithms and Architecture · Advanced Data Storage Technologies
