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...

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書目詳細資料
Main Authors: de Jorge, P, Sanyal, A, Behl, HS, Torr, PHS, Rogez, G, Dokania, PK
格式: Conference item
語言:English
出版: OpenReview 2020