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Pré-Publication, Document De Travail Année : 2022

EiX-GNN : Concept-level eigencentrality explainer for graph neural networks

Résumé

Nowadays, deep prediction models, especially graph neural networks, have a major place in critical applications. In such context, those models need to be highly interpretable or being explainable by humans, and at the societal scope, this understanding may also be feasible for humans that do not have a strong prior knowledge in models and contexts that need to be explained. In the literature, explaining is a human knowledge transfer process regarding a phenomenon between an explainer and an explainee. We propose EiX-GNN (Eigencentrality eXplainer for Graph Neural Networks) a new powerful method for explaining graph neural networks that encodes computationally this social explainer-to-explainee dependence underlying in the explanation process. To handle this dependency, we introduce the notion of explainee concept assimibility which allows explainer to adapt its explanation to explainee background or expectation. We lead a qualitative study to illustrate our explainee concept assimibility notion on real-world data as well as a qualitative study that compares, according to objective metrics established in the literature, fairness and compactness of our method with respect to performing state-of-the-art methods. It turns out that our method achieves strong results in both aspects.
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Dates et versions

hal-03686299 , version 1 (06-06-2022)
hal-03686299 , version 2 (22-07-2022)
hal-03686299 , version 3 (05-10-2022)
hal-03686299 , version 4 (07-10-2022)
hal-03686299 , version 5 (09-03-2023)

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Adrien Raison, Pascal Bourdon, David Helbert. EiX-GNN : Concept-level eigencentrality explainer for graph neural networks. 2022. ⟨hal-03686299v4⟩
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