Dr.icl: Demonstration-retrieved In-context Learning · The Large Language Model Bible Contribute to LLM-Bible

Dr.icl: Demonstration-retrieved In-context Learning

Luo Man, Xu Xin, Dai Zhuyun, Pasupat Panupong, Kazemi Mehran, Baral Chitta, Imbrasaite Vaiva, Zhao Vincent Y. Arxiv 2023

[Paper]    
Few Shot In Context Learning Prompting Reinforcement Learning Training Techniques

In-context learning (ICL), teaching a large language model (LLM) to perform a task with few-shot demonstrations rather than adjusting the model parameters, has emerged as a strong paradigm for using LLMs. While early studies primarily used a fixed or random set of demonstrations for all test queries, recent research suggests that retrieving semantically similar demonstrations to the input from a pool of available demonstrations results in better performance. This work expands the applicability of retrieval-based ICL approaches by demonstrating that even simple word-overlap similarity measures such as BM25 outperform randomly selected demonstrations. Furthermore, we extend the success of retrieval-based ICL to instruction-finetuned LLMs as well as Chain-of-Thought (CoT) prompting. For instruction-finetuned LLMs, we find that although a model has already seen the training data at training time, retrieving demonstrations from the training data at test time yields better results compared to using no demonstrations or random demonstrations. Last but not least, we train a task-specific demonstration retriever that outperforms off-the-shelf retrievers.

Similar Work