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Optimizing Few-Shot Learning with Example Reordering
This paper presents an innovative approach to enhancing few-shot learning in natural language processing (NLP) through example reordering, utilizing genetic algorithms. The proposed method, PERO (Prompting with Examples in the Right Order), demonstrates significant improvements in model performance, particularly in scenarios where data scarcity is a challenge.
