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Main Authors: Li, Jianwei, Gao, Weizhi, Lei, Qi, Xu, Dongkuan
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2310.13183
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author Li, Jianwei
Gao, Weizhi
Lei, Qi
Xu, Dongkuan
author_facet Li, Jianwei
Gao, Weizhi
Lei, Qi
Xu, Dongkuan
contents It is widely acknowledged that large and sparse models have higher accuracy than small and dense models under the same model size constraints. This motivates us to train a large model and then remove its redundant neurons or weights by pruning. Most existing works pruned the networks in a deterministic way, the performance of which solely depends on a single pruning criterion and thus lacks variety. Instead, in this paper, we propose a model pruning strategy that first generates several pruning masks in a designed random way. Subsequently, along with an effective mask-selection rule, the optimal mask is chosen from the pool of mask candidates. To further enhance efficiency, we introduce an early mask evaluation strategy, mitigating the overhead associated with training multiple masks. Our extensive experiments demonstrate that this approach achieves state-of-the-art performance across eight datasets from GLUE, particularly excelling at high levels of sparsity.
format Preprint
id arxiv_https___arxiv_org_abs_2310_13183
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Breaking through Deterministic Barriers: Randomized Pruning Mask Generation and Selection
Li, Jianwei
Gao, Weizhi
Lei, Qi
Xu, Dongkuan
Computer Vision and Pattern Recognition
Computation and Language
It is widely acknowledged that large and sparse models have higher accuracy than small and dense models under the same model size constraints. This motivates us to train a large model and then remove its redundant neurons or weights by pruning. Most existing works pruned the networks in a deterministic way, the performance of which solely depends on a single pruning criterion and thus lacks variety. Instead, in this paper, we propose a model pruning strategy that first generates several pruning masks in a designed random way. Subsequently, along with an effective mask-selection rule, the optimal mask is chosen from the pool of mask candidates. To further enhance efficiency, we introduce an early mask evaluation strategy, mitigating the overhead associated with training multiple masks. Our extensive experiments demonstrate that this approach achieves state-of-the-art performance across eight datasets from GLUE, particularly excelling at high levels of sparsity.
title Breaking through Deterministic Barriers: Randomized Pruning Mask Generation and Selection
topic Computer Vision and Pattern Recognition
Computation and Language
url https://arxiv.org/abs/2310.13183