VariationalInferenceforGraphConvolutional NetworksintheAbsenceofGraphDataand AdversarialSettings

Neural Information Processing Systems 

We formulate a joint probabilistic model that considers a prior distribution over graphs along with a GCN-based likelihood and develop a stochastic variational inference algorithm to estimate the graph posterior and the GCN parameters jointly.

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