Progressive skeletonization: trimming more fat from a network at initialization
Recent studies have shown that skeletonization (pruning parameters) of networks at initialization provides all the practical benefits of sparsity both at inference and training time, while only marginally degrading their performance. However, we observe that beyond a certain level of sparsity (appro...
Main Authors: | de Jorge, P, Sanyal, A, Behl, HS, Torr, PHS, Rogez, G, Dokania, PK |
---|---|
Formato: | Conference item |
Idioma: | English |
Publicado em: |
OpenReview
2020
|
Registos relacionados
-
Make some noise: reliable and efficient single-step adversarial training
Por: de Jorge, P, et al.
Publicado em: (2023) -
Placing objects in context via inpainting for out-of-distribution segmentation
Por: De Jorge, P, et al.
Publicado em: (2024) -
GDumb: A simple approach that questions our progress in continual learning
Por: Prabhu, A, et al.
Publicado em: (2020) -
On using focal loss for neural network calibration
Por: Mukhoti, J, et al.
Publicado em: (2020) -
Calibrating deep neural networks using focal loss
Por: Mukhoti, J, et al.
Publicado em: (2020)