Efficient Methods for Natural Language Processing: A Survey

Marcos Treviso(Stony Brook University), Ji-Ung Lee(Technische Universität Darmstadt), Tianchu Ji(Stony Brook University), Betty van Aken(Berliner Hochschule für Technik), Qingqing Cao(University of Washington), Manuel R. Ciosici(University of Southern California), Michael Hassid(Hebrew University of Jerusalem), Kenneth Heafield(University of Edinburgh), Sara Hooker, Colin Raffel(University of North Carolina at Chapel Hill), Pedro H. Martins(Instituto de Telecomunicações), André F. T. Martins(Instituto de Telecomunicações), Jessica Zosa Forde(John Brown University), Peter Milder(Stony Brook University), Edwin Simpson(University of Bristol), Noam Slonim(IBM Research - Haifa), Jesse Dodge(Allen Institute), Emma Strubell(Allen Institute), Niranjan Balasubramanian(Stony Brook University), Leon Derczynski(University of Washington), Iryna Gurevych(Technische Universität Darmstadt), Roy Schwartz(Hebrew University of Jerusalem)
Transactions of the Association for Computational Linguistics
January 1, 2023
Cited by 91Open Access
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Abstract

Abstract Recent work in natural language processing (NLP) has yielded appealing results from scaling model parameters and training data; however, using only scale to improve performance means that resource consumption also grows. Such resources include data, time, storage, or energy, all of which are naturally limited and unevenly distributed. This motivates research into efficient methods that require fewer resources to achieve similar results. This survey synthesizes and relates current methods and findings in efficient NLP. We aim to provide both guidance for conducting NLP under limited resources, and point towards promising research directions for developing more efficient methods.


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