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Review paper

Prompt Programming for Large Language Models: Beyond the Few-Shot Paradigm

Pages: 1 - 7
Published: May 8, 2021
Abstract
Prevailing methods for mapping large generative language models to supervised tasks may fail to sufficiently probe models' novel capabilities. Using GPT-3 as a case study, we show that 0-shot prompts can significantly outperform few-shot prompts. We suggest that the function of few-shot examples in these cases is better described as locating an already learned task rather than meta-learning. This analysis motivates rethinking the role of prompts...
Paper Details
Title
Prompt Programming for Large Language Models: Beyond the Few-Shot Paradigm
Published Date
May 8, 2021
Pages
1 - 7
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