Computer ScienceIEEE Transactions on Pattern Analysis and Machine Intelligence
A Generalized Explanation Framework for Visualization of Deep Learning Model Predictions
P. Wang and N. Vasconcelos
Explore GALORE, the innovative framework developed by Pei Wang and Nuno Vasconcelos that revolutionizes attribution-based explanations in computer vision. It combines attributive, deliberative, and counterfactual explanations to enhance understanding and performance in fine-grained classification tasks. Discover how it correlates with human reasoning and improves machine teaching!
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