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2024
DOI: 10.1609/aaai.v38i19.30168
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Generating Diagnostic and Actionable Explanations for Fair Graph Neural Networks

Zhenzhong Wang,
Qingyuan Zeng,
Wanyu Lin
et al.

Abstract: A plethora of fair graph neural networks (GNNs) have been proposed to promote algorithmic fairness for high-stake real-life contexts. Meanwhile, explainability is generally proposed to help machine learning practitioners debug models by providing human-understandable explanations. However, seldom work on explainability is made to generate explanations for fairness diagnosis in GNNs. From the explainability perspective, this paper explores the problem of what subgraph patterns cause the biased behavior of GNNs,… Show more

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