Prompt Programming for Large Language Models: Beyond the Few-Shot Paradigm
This work rethinks prompt programming for controlling and evaluating language models, offering more general methods for benchmarks and applications.
The paper tackles the problem of mapping large language models to supervised tasks by showing that 0-shot prompts can outperform few-shot prompts in GPT-3, suggesting that few-shot examples locate learned tasks rather than enable meta-learning.
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 in controlling and evaluating powerful language models. In this work, we discuss methods of prompt programming, emphasizing the usefulness of considering prompts through the lens of natural language. We explore techniques for exploiting the capacity of narratives and cultural anchors to encode nuanced intentions and techniques for encouraging deconstruction of a problem into components before producing a verdict. Informed by this more encompassing theory of prompt programming, we also introduce the idea of a metaprompt that seeds the model to generate its own natural language prompts for a range of tasks. Finally, we discuss how these more general methods of interacting with language models can be incorporated into existing and future benchmarks and practical applications.