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Zero- and Few-Shot NLP with Pretrained Language Models

Iz Beltagy, Arman Cohan, Robert K. Logan, Sewon Min, Sameer Singh

202226 citationsDOIOpen Access PDF

Abstract

The ability to efficiently learn from little-to-no data is critical to applying NLP to tasks where data collection is costly or otherwise difficult. This is a challenging setting both academically and practically—particularly because training neutral models typically require large amount of labeled data. More recently, advances in pretraining on unlabelled data have brought up the potential of better zero-shot or few-shot learning (Devlin et al., 2019; Brown et al., 2020). In particular, over the past year, a great deal of research has been conducted to better learn from limited data using large-scale language models. In this tutorial, we aim at bringing interested NLP researchers up to speed about the recent and ongoing techniques for zero- and few-shot learning with pretrained language models. Additionally, our goal is to reveal new research opportunities to the audience, which will hopefully bring us closer to address existing challenges in this domain.

Topics & Concepts

Computer scienceShot (pellet)Artificial intelligenceLanguage modelNatural language processingTraining setZero (linguistics)One shotDomain (mathematical analysis)Labeled dataMachine learningLinguisticsPhilosophyChemistryMathematicsEngineeringMechanical engineeringOrganic chemistryMathematical analysisTopic ModelingDomain Adaptation and Few-Shot LearningCOVID-19 diagnosis using AI