Language models pretrained on text from a wide variety of sources form the foundation of today's NLP. In light of the success of these broad-coverage models, we investigate whether it is still helpful to tailor a pretrained model to the domain of a target task. We present a study across four domains (biomedical and computer science publications, news, and reviews) and eight classification tasks, showing that a second phase of pretraining in-domain (domain-adaptive pretraining) leads to performance gains, under both high- and low-resource settings. Moreover, adapting to the task's unlabeled data (task-adaptive pretraining) improves performance even after domain-adaptive pretraining. Finally, we show that adapting to a task corpus augmented using simple data selection strategies is an effective alternative, especially when resources for domain-adaptive pretraining might be unavailable. Overall, we consistently find that multi-phase adaptive pretraining offers large gains in task performance.
Don't Stop Pretraining: Adapt Language Models to Domains and Tasks
Multi-phase adaptive pretraining improves task performance across various domains and resource settings by adapting pretrained models to domain and task-specific data.
- Year
- 2020
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- don-t-stop-pretraining-adapt-language-models-1
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- 7
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2004.10964v3ARXIV-DEFAULT
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