Rate-optimal community detection near the KS threshold via node-robust algorithms
Jingqiu Ding, Yiding Hua, Kasper Lindberg, David Steurer, Aleksandr Storozhenko

TL;DR
This paper introduces a polynomial-time algorithm for community detection in stochastic block models that nearly reaches the theoretical limit of accuracy near the KS threshold, even under adversarial node corruptions.
Contribution
It presents the first polynomial-time method achieving the minimax misclassification rate near the KS threshold in both standard and node-robust settings.
Findings
Achieves minimax-optimal misclassification rate near KS threshold
Works under adversarial node corruptions up to a certain fraction
Improves initial estimation accuracy to 1/poly(k)
Abstract
We study community detection in the \emph{symmetric -stochastic block model}, where nodes are evenly partitioned into clusters with intra- and inter-cluster connection probabilities and , respectively. Our main result is a polynomial-time algorithm that achieves the minimax-optimal misclassification rate \begin{equation*} \exp \Bigl(-\bigl(1 \pm o(1)\bigr) \tfrac{C}{k}\Bigr), \quad \text{where } C = (\sqrt{pn} - \sqrt{qn})^2, \end{equation*} whenever for some universal constant , matching the Kesten--Stigum (KS) threshold up to a factor. Notably, this rate holds even when an adversary corrupts an fraction of the nodes. To the best of our knowledge, the minimax rate was previously only attainable either via computationally inefficient procedures [ZZ15] or via…
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Taxonomy
TopicsComplex Network Analysis Techniques · Mobile Crowdsensing and Crowdsourcing · Advanced Graph Neural Networks
