Regulation and NLP (RegNLP): Taming Large Language Models
Catalina Goanta, Nikolaos Aletras, Ilias Chalkidis, Sofia Ranchordas,, Gerasimos Spanakis

TL;DR
This paper advocates for integrating regulatory studies into NLP research to better address risks and uncertainties associated with large language models, promoting a systematic, multidisciplinary approach.
Contribution
It introduces the concept of RegNLP, a new multidisciplinary research area connecting NLP with regulation studies to improve risk assessment and governance of large language models.
Findings
Highlights the polarization in AI regulation debates.
Identifies gaps in current NLP risk assessment methodologies.
Proposes systematic, multidisciplinary approaches for NLP regulation.
Abstract
The scientific innovation in Natural Language Processing (NLP) and more broadly in artificial intelligence (AI) is at its fastest pace to date. As large language models (LLMs) unleash a new era of automation, important debates emerge regarding the benefits and risks of their development, deployment and use. Currently, these debates have been dominated by often polarized narratives mainly led by the AI Safety and AI Ethics movements. This polarization, often amplified by social media, is swaying political agendas on AI regulation and governance and posing issues of regulatory capture. Capture occurs when the regulator advances the interests of the industry it is supposed to regulate, or of special interest groups rather than pursuing the general public interest. Meanwhile in NLP research, attention has been increasingly paid to the discussion of regulating risks and harms. This often…
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Taxonomy
TopicsRegulation and Compliance Studies · Law, Economics, and Judicial Systems · Occupational Health and Safety Research
