PGB: One-Shot Pruning for BERT via Weight Grouping and Permutation

Citations

WEB OF SCIENCE

0
Citations

SCOPUS

0

초록

Large pretrained language models such as BERT suffer from slow inference and high memory usage, due to their huge size. Recent approaches to compressing BERT rely on iterative pruning and knowledge distillation, which, however, are often too complicated and computationally intensive. This paper proposes a novel semi-structured one-shot pruning method for BERT, called Permutation and Grouping for BERT (PGB), which achieves high compression efficiency and sparsity while preserving accuracy. To this end, PGB identifies important groups of individual weights by permutation and prunes all other weights as a structure in both multi-head attention and feed-forward layers. Furthermore, if no important group is formed in a particular layer, PGB drops the entire layer to produce an even more compact model. Our experimental results on BERTBASE demonstrate that PGB outperforms the state-of-the-art structured pruning methods in terms of computational cost and accuracy preservation. © 2026 Copyright held by the owner/author(s).

제목
PGB: One-Shot Pruning for BERT via Weight Grouping and Permutation
저자
Lim, HyeminLee, JaeyeonChoi, Dong-Wan
DOI
10.1613/jair.1.20723
발행일
2026-04
유형
Article
저널명
Journal of Artificial Intelligence Research
85