2024
DOI: 10.1002/aaai.12200
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Data‐efficient graph learning: Problems, progress, and prospects

Kaize Ding,
Yixin Liu,
Chuxu Zhang
et al.

Abstract: Graph‐structured data, ranging from social networks to financial transaction networks, from citation networks to gene regulatory networks, have been widely used for modeling a myriad of real‐world systems. As a prevailing model architecture to model graph‐structured data, graph neural networks (GNNs) have drawn much attention in both academic and industrial communities in the past decades. Despite their success in different graph learning tasks, existing methods usually rely on learning from “big” data, requir… Show more

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