Stochastic block models with many communities and the Kesten--Stigum bound

Abstract

We study the inference of communities in stochastic block models with a growing number of communities. For block models with n vertices and a fixed number of communities q, it was predicted in Decelle et al. (2011) that there are computationally efficient algorithms for recovering the communities above the Kesten--Stigum (KS) bound and that efficient recovery is impossible below the KS bound. This conjecture has since stimulated a lot of interest, with the achievability side proven in a line of research that culminated in the work of Abbe and Sandon (2018). Conversely, recent work by Sohn and Wein (2025) provides evidence for the hardness part using the low-degree paradigm. In this paper we investigate community recovery in the regime q=qn ∞ as n∞ where no such predictions exist. We show that efficient inference of communities remains possible above the KS bound. Furthermore, we show that recovery of block models is low-degree hard below the KS bound when the number of communities satisfies q n. Perhaps surprisingly, we find that when q n, there is an efficient algorithm based on non-backtracking walks for recovery even below the KS bound. We identify a new threshold and ask if it is the threshold for efficient recovery in this regime. Finally, we show that detection is easy and identify (up to a constant) the information-theoretic threshold for community recovery as the number of communities q diverges. Our low-degree hardness results also naturally have consequences for graphon estimation, improving results of Luo and Gao (2024).

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