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Prompt tuning, which only tunes continuous prompts with a frozen language model, substantially reduces per-task storage and memory usage at training. However, in the context of NLU, prior work reveals that prompt tuning does not perform well for normal-sized pretrained models. We also find that existing methods of prompt tuning cannot handle hard sequence labeling tasks, indicating a lack of universality. We present a novel empirical finding that properly optimized prompt tuning can be universally effective across a wide range of model scales and NLU tasks. It matches the performance of finetuning while having only 0.1%-3% tuned parameters. Our method P-Tuning v2 is an implementation of Deep Prompt Tuning Given the universality and simplicity of P-Tuning v2, we believe it can serve as an alternative to finetuning and a strong baseline for future research. 1
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Xiao Liu
Kaixuan Ji
Yicheng Fu
Tsinghua University
Beijing Academy of Artificial Intelligence
ShangHai JiAi Genetics & IVF Institute
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Liu et al. (Sat,) studied this question.
www.synapsesocial.com/papers/69d9a813e6ab964fb0836133 — DOI: https://doi.org/10.18653/v1/2022.acl-short.8
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