2000 character limit reached
The SelectGen Challenge: Finding the Best Training Samples for Few-Shot Neural Text Generation (2108.06614v1)
Published 14 Aug 2021 in cs.CL
Abstract: We propose a shared task on training instance selection for few-shot neural text generation. Large-scale pretrained LLMs have led to dramatic improvements in few-shot text generation. Nonetheless, almost all previous work simply applies random sampling to select the few-shot training instances. Little to no attention has been paid to the selection strategies and how they would affect model performance. The study of the selection strategy can help us to (1) make the most use of our annotation budget in downstream tasks and (2) better benchmark few-shot text generative models. We welcome submissions that present their selection strategies and the effects on the generation quality.
- Ernie Chang (34 papers)
- Xiaoyu Shen (73 papers)
- Alex Marin (5 papers)
- Vera Demberg (48 papers)