Fine-tuning is the de facto way to leverage large pretrained language models to perform downstream tasks. However, it modifies all the language model parameters and therefore necessitates storing a full copy for each task. In this paper, we propose prefix-tuning, a lightweight alternative to fine-tuning for natural language generation tasks, which keeps language model parameters frozen, but optimizes a small continuous task-specific vector (called the prefix). Prefix-tuning draws inspiration from prompting, allowing subsequent tokens to attend to this prefix as if it were "virtual tokens". We apply prefix-tuning to GPT-2 for table-to-text generation and to BART for summarization. We find that by learning only 0.1% of the parameters, prefix-tuning obtains comparable performance in the full data setting, outperforms fine-tuning in low-data settings, and extrapolates better to examples with topics unseen during training.
Prefix-Tuning: Optimizing Continuous Prompts for Generation
Prefix-tuning, a lightweight alternative to fine-tuning, optimizes a small, task-specific vector in language models to achieve comparable performance with less data and better extrapolation to unseen topics.
- Year
- 2021
- Venue
- ACL 2021 5
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- 2
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2101.00190ARXIV-DEFAULT
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