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PROPANE: Prompt design as an inverse problem

13 November 2023
Rimon Melamed
Lucas H. McCabe
T. Wakhare
Yejin Kim
H. H. Huang
Enric Boix-Adsera
ArXiv (abs)PDFHTML
Abstract

Carefully-designed prompts are key to inducing desired behavior in Large Language Models (LLMs). As a result, great effort has been dedicated to engineering prompts that guide LLMs toward particular behaviors. In this work, we propose an automatic prompt optimization framework, PROPANE, which aims to find a prompt that induces semantically similar outputs to a fixed set of examples without user intervention. We further demonstrate that PROPANE can be used to (a) improve existing prompts, and (b) discover semantically obfuscated prompts that transfer between models.

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