Smooth loss functions for deep top-k classification

The top-$k$ error is a common measure of performance in machine learning and computer vision. In practice, top-$k$ classification is typically performed with deep neural networks trained with the cross-entropy loss. Theoretical results indeed suggest that cross-entropy is an optimal learning objecti...

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Bibliographic Details
Main Authors: Berrada, L, Zisserman, A, Mudigonda, P
Format: Conference item
Published: 2018