AI RESEARCH
Subgraph Concept Networks: Concept Levels in Graph Classification
arXiv CS.LG
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ArXi:2604.18868v1 Announce Type: new The reasoning process of Graph Neural Networks is complex and considered opaque, limiting trust in their predictions. To alleviate this issue, prior work has proposed concept-based explanations, extracted from clusters in the model's node embeddings. However, a limitation of concept-based explanations is that they only explain the node embedding space and are obscured by pooling in graph classification. To mitigate this issue and provide a deeper level of understanding, we propose the Subgraph Concept Network.