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Graph Concept Bottleneck Models
2025Haotian Xu, Tsui-Wei Weng et al.
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Incorporating Retrieval-based Causal Learning with Information Bottlenecks for Interpretable Molecular Graph Learning
2025Jiahua Rao, Hanjing Lin et al.
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Showing 20 of 55 references

Founder's Pitch

"A method for integrating graph concept bottleneck layers in GNNs to enhance interpretability and performance."

Graph Neural NetworksScore: 5View PDF ↗

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7.5

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