Prompt engineering for text generation: Difference between revisions

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Diao et al. (2023) proposed identifying examples with [[high disagreement]] or [[entropy]] among multiple sampling trials based on [[uncertainty-based active learning]]. These examples can then be annotated and used in few-shot prompts.
Diao et al. (2023) proposed identifying examples with [[high disagreement]] or [[entropy]] among multiple sampling trials based on [[uncertainty-based active learning]]. These examples can then be annotated and used in few-shot prompts.


==Tips for Example Ordering==
===Tips for Example Ordering===
A general recommendation is to maintain a diverse selection of examples relevant to the test sample and present them in random order to avoid majority label bias and recency bias. Increasing model sizes or including more training examples does not necessarily reduce variance among different permutations of in-context examples. The exact order may work well for one model but poorly for another.
A general recommendation is to maintain a diverse selection of examples relevant to the test sample and present them in random order to avoid majority label bias and recency bias. Increasing model sizes or including more training examples does not necessarily reduce variance among different permutations of in-context examples. The exact order may work well for one model but poorly for another.


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