Large Language Models (LLMs) have demonstrated exceptional abilities across a broad range of language-related tasks, including generating solutions to complex reasoning problems. An effective technique to enhance LLM performance is in-context learning, which encourages a step-by-step reasoning process by including explanatory examples to guide the model's responses. However, selecting appropriate exemplars for the model poses a challenge, as each dataset demands a distinct set of exemplars to enable the LLM to learn effectively and perform well on the test set. Current studies often rely on uncertainty- or diversity-based selection strategies to select exemplars for annotation and to improve model learning. However, these studies typically employ a non-adaptive approach, selecting a set of exemplars all at once. We argue that this non-adaptive strategy may result in a set of exemplars with high redundancy in terms of the knowledge covered, ultimately reducing their overall informativeness. To address this limitation, we propose Adaptive-Prompt, a novel method that adaptively selects exemplars by leveraging model feedback from previously chosen exemplars. Experimental results show that Adaptive-Prompt significantly enhances LLM performance across a variety of reasoning tasks.
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Shuzhang Cai
Twumasi Mensah-Boateng
Xander Kuksov
University at Buffalo, State University of New York
University of North Texas
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Cai et al. (Mon,) studied this question.
www.synapsesocial.com/papers/69a75e92c6e9836116a294c8 — DOI: https://doi.org/10.21428/594757db.29d553c0