Graph Adversarial Self-Supervised Learning
–Neural Information Processing Systems
This paper studies a long-standing problem of learning the representations of a whole graph without human supervision. The recent self-supervised learning methods train models to be invariant to the transformations (views) of the inputs. However, designing these views requires the experience of human experts. Inspired by adversarial training, we propose an adversarial self-supervised learning (\texttt{GASSL}) framework for learning unsupervised representations of graph data without any handcrafted views.
Neural Information Processing Systems
Dec-24-2025, 08:56:21 GMT
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