Learning Graph Representations with Embedding Propagation
–Neural Information Processing Systems
Forward messages consist of label representations such as representations of words and other attributes associated with the nodes. Backward messages consist of gradients that result from aggregating the label representations and applying a reconstruction loss. Node representations are finally computed from the representation of their labels.
Neural Information Processing Systems
May-28-2025, 05:07:46 GMT
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