In-context Learning with Retrieved Demonstrations for Language Models: A Survey
- URL: http://arxiv.org/abs/2401.11624v5
- Date: Sat, 23 Mar 2024 16:35:45 GMT
- Title: In-context Learning with Retrieved Demonstrations for Language Models: A Survey
- Authors: Man Luo, Xin Xu, Yue Liu, Panupong Pasupat, Mehran Kazemi,
- Abstract summary: Few-shot in-context learners (ICL) are adept at adapting to new tasks with just a few demonstrations in the input context.
Instead of using a fixed set of demonstrations, one recent development is to retrieve demonstrations tailored to each input query.
We discuss and compare different design choices for retrieval models, retrieval training procedures, and inference algorithms.
- Score: 23.24271704145876
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Language models, especially pre-trained large language models, have showcased remarkable abilities as few-shot in-context learners (ICL), adept at adapting to new tasks with just a few demonstrations in the input context. However, the model's ability to perform ICL is sensitive to the choice of the few-shot demonstrations. Instead of using a fixed set of demonstrations, one recent development is to retrieve demonstrations tailored to each input query. The implementation of demonstration retrieval is relatively straightforward, leveraging existing databases and retrieval systems. This not only improves the efficiency and scalability of the learning process but also has been shown to reduce biases inherent in manual example selection. In light of the encouraging results and growing research in ICL with retrieved demonstrations, we conduct an extensive review of studies in this area. In this survey, we discuss and compare different design choices for retrieval models, retrieval training procedures, and inference algorithms.
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