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Low-Degree Hardness of Detection for Correlated Erdős-Rényi Graphs

27 November 2023
Jian Ding
Hangyu Du
Zhangsong Li
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Abstract

Given two Erd\H{o}s-R\ényi graphs with nnn vertices whose edges are correlated through a latent vertex correspondence, we study complexity lower bounds for the associated correlation detection problem for the class of low-degree polynomial algorithms. We provide evidence that any degree-O(ρ−1)O(\rho^{-1})O(ρ−1) polynomial algorithm fails for detection, where ρ\rhoρ is the edge correlation. Furthermore, in the sparse regime where the edge density q=n−1+o(1)q=n^{-1+o(1)}q=n−1+o(1), we provide evidence that any degree-ddd polynomial algorithm fails for detection, as long as log⁡d=o(log⁡nlog⁡nq∧log⁡n)\log d=o\big( \frac{\log n}{\log nq} \wedge \sqrt{\log n} \big)logd=o(lognqlogn​∧logn​) and the correlation ρ<α\rho<\sqrt{\alpha}ρ<α​ where α≈0.338\alpha\approx 0.338α≈0.338 is the Otter's constant. Our result suggests that several state-of-the-art algorithms on correlation detection and exact matching recovery may be essentially the best possible.

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