2024
DOI: 10.1145/3630260
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Robust Graph Meta-Learning for Weakly Supervised Few-Shot Node Classification

Kaize Ding,
Jianling Wang,
Jundong Li
et al.

Abstract: Graph machine learning (Graph ML) models typically require abundant labeled instances to provide sufficient supervision signals, which is commonly infeasible in real-world scenarios since labeled data for newly emerged concepts (e.g., new categorizations of nodes) on graphs is rather limited. In order to efficiently learn with a small amount of data on graphs, meta-learning has been investigated in graph ML. By transferring the knowledge learned from previous experiences to new tasks, graph meta-learning appro… Show more

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