Information-theoretic Limits for Community Detection in Network Models

NeurIPS 2018 Chuyang KeJean Honorio

We analyze the information-theoretic limits for the recovery of node labels in several network models. This includes the Stochastic Block Model, the Exponential Random Graph Model, the Latent Space Model, the Directed Preferential Attachment Model, and the Directed Small-world Model... (read more)

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