Hiding, Shuffling, and Cycle Finding: Quantum Algorithms on Edge Lists
Amin Shiraz Gilani, Daochen Wang, Pei Wu, Xingyu Zhou

TL;DR
This paper investigates quantum algorithms for triangle and cycle detection in edge list graph models, providing tight bounds and new techniques that connect problems like k-distinctness and cycle finding.
Contribution
It introduces new quantum query complexity bounds for triangle and cycle problems in edge list models and develops advanced techniques within the recording query framework.
Findings
Quantum query complexity for triangle problems is tightly bounded.
New techniques extend the recording query framework to non-product distributions.
Lower bounds match upper bounds up to subpolynomial factors.
Abstract
The edge list model is arguably the simplest input model for graphs, where the graph is specified by a list of its edges. In this model, we study the quantum query complexity of three variants of the triangle finding problem. The first asks whether there exists a triangle containing a target edge and raises general questions about the hiding of a problem's input among irrelevant data. The second asks whether there exists a triangle containing a target vertex and raises general questions about the shuffling of a problem's input. The third asks whether there exists a triangle; this problem bridges the -distinctness and -sum problems, which have been extensively studied by both cryptographers and complexity theorists. We provide tight or nearly tight results for these problems as well as some first answers to the general questions they raise. Furthermore, given any graph with low…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Advanced Database Systems and Queries · Data Management and Algorithms
