GPT Understands, Too
Liu, Xiao, Zheng, Yanan, Du, Zhengxiao, Ding, Ming, Qian, Yujie, Yang, Zhilin, Tang, Jie
–arXiv.org Artificial Intelligence
Prompting a pretrained language model with natural language patterns has been proved effective for natural language understanding (NLU). However, our preliminary study reveals that manual discrete prompts often lead to unstable performance -- e.g., changing a single word in the prompt might result in substantial performance drop. We propose a novel method P-Tuning that employs trainable continuous prompt embeddings in concatenation with discrete prompts. Empirically, P-Tuning not only stabilizes training by minimizing the gap between various discrete prompts, but also improves performance by a sizeable margin on a wide range of NLU tasks including LAMA and SuperGLUE. P-Tuning is generally effective for both frozen and tuned language models, under both the fully-supervised and few-shot settings.
arXiv.org Artificial Intelligence
Oct-25-2023