AI RESEARCH

Instructing Large Language Models for Low-Resource Languages: A Systematic Study for Basque

arXiv CS.CL

ArXi:2506.07597v3 Announce Type: replace Instructing language models with user intent requires large instruction datasets, which are only available for a limited set of languages. In this paper, we explore alternatives to conventional instruction adaptation pipelines in low-resource scenarios. We assume a realistic scenario for low-resource languages, where only the following are available: corpora in the target language, existing open-weight multilingual base and instructed backbone LLMs, and synthetically generated instructions sampled from the instructed backbone.