Multi-class


Label Smoothing

Label Smoothing is a regularization technique that introduces noise for the labels.

We show that label smoothing encourages the representations of training examples from the same class to group in tight clusters. This results in loss of information in the logits about resemblances between instances of different classes, which is necessary for distillation, but does not hurt generalization or calibration of the model’s predictions.

Smoothie
Smoothie