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arxiv: 2207.13586 · v3 · pith:UJXM33EL · submitted 2022-07-27 · cs.LG · cs.AI· cs.LO

Encoding Concepts in Graph Neural Networks

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classification cs.LG cs.AIcs.LO
keywords graphnetworksapproachconceptsmodelconceptexplanationsfirst
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The opaque reasoning of Graph Neural Networks induces a lack of human trust. Existing graph network explainers attempt to address this issue by providing post-hoc explanations, however, they fail to make the model itself more interpretable. To fill this gap, we introduce the Concept Encoder Module, the first differentiable concept-discovery approach for graph networks. The proposed approach makes graph networks explainable by design by first discovering graph concepts and then using these to solve the task. Our results demonstrate that this approach allows graph networks to: (i) attain model accuracy comparable with their equivalent vanilla versions, (ii) discover meaningful concepts that achieve high concept completeness and purity scores, (iii) provide high-quality concept-based logic explanations for their prediction, and (iv) support effective interventions at test time: these can increase human trust as well as significantly improve model performance.

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Cited by 2 Pith papers

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    Concept-based models can use controlled 'benign' information leakage to remain accurate and intervenable under real-world concept incompleteness by reframing their training objective.

  2. Explaining the Explainers in Graph Neural Networks: a Comparative Study

    cs.LG 2022-10 unverdicted novelty 5.0

    Benchmark study of ten GNN explainers on eight architectures and six datasets that isolates usable components and issues practical recommendations.