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Main Authors: Kanepajs, Artūrs, Ivanov, Vladimir, Moulange, Richard
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.13708
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author Kanepajs, Artūrs
Ivanov, Vladimir
Moulange, Richard
author_facet Kanepajs, Artūrs
Ivanov, Vladimir
Moulange, Richard
contents Linguistically inclusive LLMs -- which maintain good performance regardless of the language with which they are prompted -- are necessary for the diffusion of AI benefits around the world. Multilingual jailbreaks that rely on language translation to evade safety measures undermine the safe and inclusive deployment of AI systems. We provide policy recommendations to enhance the multilingual capabilities of AI while mitigating the risks of multilingual jailbreaks. We examine how a language's level of resourcing relates to how vulnerable LLMs are to multilingual jailbreaks in that language. We do this by testing five advanced AI models across 24 official languages of the EU. Building on prior research, we propose policy actions that align with the EU legal landscape and institutional framework to address multilingual jailbreaks, while promoting linguistic inclusivity. These include mandatory assessments of multilingual capabilities and vulnerabilities, public opinion research, and state support for multilingual AI development. The measures aim to improve AI safety and functionality through EU policy initiatives, guiding the implementation of the EU AI Act and informing regulatory efforts of the European AI Office.
format Preprint
id arxiv_https___arxiv_org_abs_2409_13708
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Towards Safe Multilingual Frontier AI
Kanepajs, Artūrs
Ivanov, Vladimir
Moulange, Richard
Computation and Language
Artificial Intelligence
Computers and Society
Linguistically inclusive LLMs -- which maintain good performance regardless of the language with which they are prompted -- are necessary for the diffusion of AI benefits around the world. Multilingual jailbreaks that rely on language translation to evade safety measures undermine the safe and inclusive deployment of AI systems. We provide policy recommendations to enhance the multilingual capabilities of AI while mitigating the risks of multilingual jailbreaks. We examine how a language's level of resourcing relates to how vulnerable LLMs are to multilingual jailbreaks in that language. We do this by testing five advanced AI models across 24 official languages of the EU. Building on prior research, we propose policy actions that align with the EU legal landscape and institutional framework to address multilingual jailbreaks, while promoting linguistic inclusivity. These include mandatory assessments of multilingual capabilities and vulnerabilities, public opinion research, and state support for multilingual AI development. The measures aim to improve AI safety and functionality through EU policy initiatives, guiding the implementation of the EU AI Act and informing regulatory efforts of the European AI Office.
title Towards Safe Multilingual Frontier AI
topic Computation and Language
Artificial Intelligence
Computers and Society
url https://arxiv.org/abs/2409.13708