Achieving the KS threshold in the general stochastic block model with linearized acyclic belief propagation
–Neural Information Processing Systems
The stochastic block model (SBM) has long been studied in machine learning and network science as a canonical model for clustering and community detection. In the recent years, new developments have demonstrated the presence of threshold phenomena for this model, which have set new challenges for algorithms. This was proved for two communities, but remained open from three communities. We prove this conjecture here, obtaining a more general result that applies to arbitrary SBMs with linear size communities. The developed algorithm is a linearized acyclic belief propagation (ABP) algorithm, which mitigates the effects of cycles while provably achieving the KS threshold in O(n \ln n) time.
Neural Information Processing Systems
Feb-11-2025, 19:20:16 GMT
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