2024
DOI: 10.1609/aaai.v38i11.29103
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Rethinking Causal Relationships Learning in Graph Neural Networks

Hang Gao,
Chengyu Yao,
Jiangmeng Li
et al.

Abstract: Graph Neural Networks (GNNs) demonstrate their significance by effectively modeling complex interrelationships within graph-structured data. To enhance the credibility and robustness of GNNs, it becomes exceptionally crucial to bolster their ability to capture causal relationships. However, despite recent advancements that have indeed strengthened GNNs from a causal learning perspective, conducting an in-depth analysis specifically targeting the causal modeling prowess of GNNs remains an unresolved issue. In o… Show more

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