Natural Language Processing RELIES on Linguistics
Large Language Models (LLMs) have become capable of generating highly fluent text in certain languages, without modules specially designed to capture grammar or semantic coherence. What does this mean for the future of linguistic expertise in NLP? We highlight several aspects in which NLP (still) re...
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Zusammenfassung: | Large Language Models (LLMs) have become capable of generating highly fluent
text in certain languages, without modules specially designed to capture
grammar or semantic coherence. What does this mean for the future of linguistic
expertise in NLP? We highlight several aspects in which NLP (still) relies on
linguistics, or where linguistic thinking can illuminate new directions. We
argue our case around the acronym RELIES that encapsulates six major facets
where linguistics contributes to NLP: Resources, Evaluation, Low-resource
settings, Interpretability, Explanation, and the Study of language. This list
is not exhaustive, nor is linguistics the main point of reference for every
effort under these themes; but at a macro level, these facets highlight the
enduring importance of studying machine systems vis-\`a-vis systems of human
language. |
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DOI: | 10.48550/arxiv.2405.05966 |