AIM is a new evaluation framework for explainability in GNNs that combines accuracy, instance-level, and model-level measures, applied to graph kernel networks to create an improved model xGKN.
XGNN: Towards Model-Level Explanations of Graph Neural Networks , url=
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Reveal-to-Revise integrates cross-modal attention fusion, Grad-CAM++ attribution, and bias feedback in a conditional attention WGAN-GP to report high accuracy, F1, and fairness metrics on multimodal MNIST variants and toxic text tasks.
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AIMing for Standardised Explainability Evaluation in GNNs: A Framework and Case Study on Graph Kernel Networks
AIM is a new evaluation framework for explainability in GNNs that combines accuracy, instance-level, and model-level measures, applied to graph kernel networks to create an improved model xGKN.
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Reveal-to-Revise: Explainable Bias-Aware Generative Modeling with Multimodal Attention
Reveal-to-Revise integrates cross-modal attention fusion, Grad-CAM++ attribution, and bias feedback in a conditional attention WGAN-GP to report high accuracy, F1, and fairness metrics on multimodal MNIST variants and toxic text tasks.