We introduce BitFit, a sparse-finetuning method where only the bias-terms of the model (or a subset of them) are being modified. We show that with small-to-medium training data, applying BitFit on pre-trained BERT models is competitive with (and sometimes better than) fine-tuning the entire model. For larger data, the method is competitive with other sparse fine-tuning methods. Besides their practical utility, these findings are relevant for the question of understanding the commonly-used process of finetuning: they support the hypothesis that finetuning is mainly about exposing knowledge induced by language-modeling training, rather than learning new task-specific linguistic knowledge.
BitFit: Simple Parameter-efficient Fine-tuning for Transformer-based Masked Language-models
BitFit, a sparse-finetuning method that modifies only the bias terms of pre-trained BERT models, achieves competitive performance with full fine-tuning and other sparse methods, particularly with small-to-medium training data.
- Year
- 2021
- Venue
- ACL 2022 5
- Authors
- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2106.10199v5ARXIV-DEFAULT
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