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GPS: Genetic Prompt Search for Efficient Few-Shot Learning

Hanwei Xu, Yujun Chen, Yulun Du, Nan Shao, Wang Yanggang, Haiyu Li, Zhilin Yang

202225 citationsDOIOpen Access PDF

Abstract

Prompt-based techniques have demostrated great potential for improving the few-shot generalization of pretrained language models. However, their performance heavily relies on the manual design of prompts and thus requiring a lot of human efforts. In this paper, we introduce Genetic Prompt Search (GPS) to improve few-shot learning with prompts, which utilizes a genetic algorithm to automatically search for the best prompt.GPS is gradient-free and requires no update of model parameters but only a small validation set. Experiments on diverse datasets proved the effectiveness of GPS, which outperforms manual prompts by a large margin of 2.6 points. Our method is also better than other parameter-efficient tuning methods such as prompt tuning.

Topics & Concepts

Global Positioning SystemComputer scienceMargin (machine learning)GeneralizationShot (pellet)Set (abstract data type)Artificial intelligenceMachine learningGenetic algorithmOne shotData miningMathematicsEngineeringMathematical analysisChemistryProgramming languageMechanical engineeringOrganic chemistryTelecommunicationsTopic ModelingNatural Language Processing TechniquesSpeech Recognition and Synthesis