LGJun 17, 2024

On GNN explanability with activation rules

arXiv:2406.11594v1
Originality Incremental advance
AI Analysis

This addresses the societal acceptability and trustworthiness of GNNs, which is crucial for their deployment in real-world applications, though it is an incremental improvement in explainability methods.

The paper tackles the problem of explaining Graph Neural Networks (GNNs) by mining activation rules in hidden layers to understand their internal functioning, achieving up to 200% improvement in fidelity for explaining graph classification compared to state-of-the-art methods.

GNNs are powerful models based on node representation learning that perform particularly well in many machine learning problems related to graphs. The major obstacle to the deployment of GNNs is mostly a problem of societal acceptability and trustworthiness, properties which require making explicit the internal functioning of such models. Here, we propose to mine activation rules in the hidden layers to understand how the GNNs perceive the world. The problem is not to discover activation rules that are individually highly discriminating for an output of the model. Instead, the challenge is to provide a small set of rules that cover all input graphs. To this end, we introduce the subjective activation pattern domain. We define an effective and principled algorithm to enumerate activations rules in each hidden layer. The proposed approach for quantifying the interest of these rules is rooted in information theory and is able to account for background knowledge on the input graph data. The activation rules can then be redescribed thanks to pattern languages involving interpretable features. We show that the activation rules provide insights on the characteristics used by the GNN to classify the graphs. Especially, this allows to identify the hidden features built by the GNN through its different layers. Also, these rules can subsequently be used for explaining GNN decisions. Experiments on both synthetic and real-life datasets show highly competitive performance, with up to 200% improvement in fidelity on explaining graph classification over the SOTA methods.

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