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Beyond Topological Self-Explainable GNNs: A Formal Explainability Perspective

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Self-Explainable Graph Neural Networks (SE-GNNs) are popular explainable-by-design GNNs, but their explanations' properties and limitations are not well understood. Our first contribution fills this gap by formalizing the explanations extracted by some popular SE-GNNs, referred to as Minimal Explanations (MEs), and comparing them to established notions of explanations, namely Prime Implicant (PI) and faithful explanations. Our analysis reveals that MEs match PI explanations for a restricted but significant family of tasks. In general, however, they can be less informative than PI explanations and are surprisingly misaligned with widely accepted notions of faithfulness. Although faithful and PI explanations are informative, they are intractable to find and we show that they can be prohibitively large. Given these observations, a natural choice is to augment SE-GNNs with alternative modalities of explanations taking care of SE-GNNs' limitations. To this end, we propose Dual-Channel GNNs that integrate a white-box rule extractor and a standard SE-GNN, adaptively combining both channels. Our experiments show that even a simple instantiation of Dual-Channel GNNs can recover succinct rules and perform on par or better than widely used SE-GNNs.

Steve Azzolin, Sagar Malhotra, Andrea Passerini, Stefano Teso• 2025

Related benchmarks

TaskDatasetResultRank
Interpretable Graph ClassificationMutagenicity
AUC98.5
24
Interpretable Graph ClassificationBENZENE
AUC0.9104
24
Interpretable Graph Classification3MR
AUC98.78
24
Graph InterpretationBA-2MOTIFS
AUC99.72
12
Interpretable Graph ClassificationBA-2MOTIFS
AUC98.23
12
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