Given a pretrained encoder-based language model, how can we accurately compress it without retraining? Retraining-free structured pruning algorithms are crucial in pretrained language model compression due to their significantly reduced pruning cost and capability to prune large language models. However, existing retraining-free algorithms encounter severe accuracy degradation, as they fail to handle pruning errors, especially at high compression rates. In this paper, we propose K-prune (Knowledge-preserving pruning), an accurate retraining-free structured pruning algorithm for pretrained encoder-based language models. K-prune focuses on preserving the useful knowledge of the pretrained model to minimize pruning errors through a carefully designed iterative pruning process composed of knowledge measurement, knowledge-preserving mask search, and knowledge-preserving weight-tuning. As a result, K-prune shows significant accuracy improvements up to 58.02%p higher F1 score compared to existing retraining-free pruning algorithms under a high compression rate of 80% on the SQuAD benchmark without any retraining process.
Accurate Retraining-free Pruning for Pretrained Encoder-based Language Models
K-prune, a retraining-free pruning algorithm, improves accuracy in compressed language models by preserving knowledge through iterative pruning and weight tuning.
- Year
- 2023
- Venue
- arXiv 2023
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- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2308.03449v2ARXIV-DEFAULT
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