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Optimality of variational inference for stochasticblock model with missing links
2021
Neural Information Processing Systems
Variational methods are extremely popular in the analysis of network data. Statistical guarantees obtained for these methods typically provide asymptotic normality for the problem of estimation of global model parameters under the stochastic block model. In the present work, we consider the case of networks with missing links that is important in application and show that the variational approximation to the maximum likelihood estimator converges at the minimax rate. This provides the first
dblp:conf/nips/GaucherK21
fatcat:vk7jh4ajyrejfjs3l4c5c2arza