Ruishi Zou
2024
More Samples or More Prompts? Exploring Effective Few-Shot In-Context Learning for LLMs with In-Context Sampling
Bingsheng Yao
|
Guiming Chen
|
Ruishi Zou
|
Yuxuan Lu
|
Jiachen Li
|
Shao Zhang
|
Yisi Sang
|
Sijia Liu
|
James Hendler
|
Dakuo Wang
Findings of the Association for Computational Linguistics: NAACL 2024
While most existing works on LLM prompting techniques focus only on how to select a better set of data samples inside one single prompt input (In-Context Learning or ICL), why can not we design and leverage multiple prompts together to further improve the LLM’s performance? In this work, we propose In-Context Sampling (ICS), a low-resource LLM prompting technique to produce confident predictions by optimizing the construction of multiple ICL prompt inputs. Extensive experiments with three open-source LLMs (FlanT5-XL, Mistral-7B, and Mixtral-8x7B) on four NLI datasets (e-SNLI, Multi-NLI, ANLI, and Contract-NLI) and one QA dataset (CommonsenseQA) illustrate that ICS can consistently enhance LLMs’ performance. An in-depth evaluation with three data similarity-based ICS strategies suggests that these strategies can further elevate LLM’s performance, which sheds light on a new yet promising future research direction.
Search
Co-authors
- Bingsheng Yao 1
- Guiming Chen 1
- Yuxuan Lu 1
- Jiachen Li 1
- Shao Zhang 1
- show all...