GraphFew-shotLearningwith Task-specificStructures
–Neural Information Processing Systems
Graph few-shot learning is of great importance among various graph learning tasks. Under thefew-shot scenario, models areoftenrequired toconduct classification givenlimited labeled samples. Existing graph few-shot learning methods typically leverage Graph Neural Networks (GNNs) and perform classification across a series of meta-tasks. Nevertheless, these methods generally rely on the original graph (i.e., the graph that the meta-task is sampled from) to learn node representations.
Neural Information Processing Systems
Feb-19-2026, 20:00:48 GMT