Abstract
We study the problem of community recovery and detection in multi-layer stochastic block models, focusing on the critical network density threshold for consistent community structure inference. Using a prototypical two-block model, we reveal a computational barrier for such multilayer stochastic block models that does not exist for its single-layer counterpart: When there are no computational constraints, the density threshold depends linearly on the number of layers. However, when restricted to polynomial-time algorithms, the density threshold scales with the square root of the number of layers, assuming correctness of a low-degree polynomial hardness conjecture. Our results provide a nearly complete picture of the optimal inference in multiple-layer stochastic block models and partially settle the open question in (J. Amer. Statist. Assoc. 118 (2023) 2433–2445) regarding the optimality of the bias-adjusted spectral method.
Funding Statement
JL’s research is partially supported by NSF Grants DMS-2015492, DMS-2310764.
The research of ARZ and ZZ was supported in part by NSF Grant CAREER-2203741.
Citation
Jing Lei. Anru R. Zhang. Zihan Zhu. "Computational and statistical thresholds in multi-layer stochastic block models." Ann. Statist. 52 (5) 2431 - 2455, October 2024. https://doi.org/10.1214/24-AOS2441
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