AINeutralarXiv – CS AI · Mar 174/10
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Informative Perturbation Selection for Uncertainty-Aware Post-hoc Explanations
Researchers introduce EAGLE, a new framework for explaining black-box machine learning models using information-theoretic active learning to select optimal data perturbations. The method produces feature importance scores with uncertainty estimates and demonstrates improved explanation reproducibility and stability compared to existing approaches like LIME.