Revisiting Token Dropping Strategy in Efficient BERT Pretraining (2305.15273v1)
Abstract: Token dropping is a recently-proposed strategy to speed up the pretraining of masked LLMs, such as BERT, by skipping the computation of a subset of the input tokens at several middle layers. It can effectively reduce the training time without degrading much performance on downstream tasks. However, we empirically find that token dropping is prone to a semantic loss problem and falls short in handling semantic-intense tasks. Motivated by this, we propose a simple yet effective semantic-consistent learning method (ScTD) to improve the token dropping. ScTD aims to encourage the model to learn how to preserve the semantic information in the representation space. Extensive experiments on 12 tasks show that, with the help of our ScTD, token dropping can achieve consistent and significant performance gains across all task types and model sizes. More encouragingly, ScTD saves up to 57% of pretraining time and brings up to +1.56% average improvement over the vanilla token dropping.
- Qihuang Zhong (22 papers)
- Liang Ding (159 papers)
- Juhua Liu (37 papers)
- Xuebo Liu (54 papers)
- Min Zhang (630 papers)
- Bo Du (264 papers)
- Dacheng Tao (829 papers)