ACL2023
Cold-Start Data Selection for Better Few-shot Language Model Fine-tuning: A Prompt-based Uncertainty Propagation Approach
Yue Yu, Rongzhi Zhang, Ran Xu, Jieyu Zhang, Jiaming Shen, Chao Zhang
被引用 12 次
摘要
Large Language Models have demonstrated remarkable few-shot performance, but the performance can be sensitive to the selection of few-shot instances. We present PATRON, a prompt-based data selection method for pretrained language model fine-tuning under coldstart scenarios, i.e., no initial labeled data are available. In PATRON, we design (1) a promptbased uncertainty propagation approach to estimate the importance of data points and (2) a partition-then-rewrite (PTR) strategy to promote sample diversity when querying for annotations. Experiments on six text classification datasets show that PATRON outperforms the strongest cold-start data selection baselines by up to 6.9%. Besides, with 128 labels only, PA-TRON achieves 91.0% and 92.1% of the fully supervised performance based on vanilla finetuning and prompt-based learning respectively. Our implementation of PATRON is available at https://github.com/yueyu1030/Patron .