Calibrating deep neural networks using focal loss

Miscalibration -- a mismatch between a model's confidence and its correctness -- of Deep Neural Networks (DNNs) makes their predictions hard to rely on. Ideally, we want networks to be accurate, calibrated and confident. We show that, as opposed to the standard cross-entropy loss, focal loss (L...

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Detalhes bibliográficos
Main Authors: Mukhoti, J, Kulharia, V, Sanyal, A, Golodetz, S, Torr, PHS, Dokania, PK
Formato: Conference item
Idioma:English
Publicado em: Curran Associates 2020