Laura Bernardy
2026
Testing Low-Resource Language Support in LLMs Using Language Proficiency Exams: the Case of Luxembourgish
Cedric Lothritz | Jordi Cabot | Laura Bernardy
Findings of the Association for Computational Linguistics: EACL 2026
Cedric Lothritz | Jordi Cabot | Laura Bernardy
Findings of the Association for Computational Linguistics: EACL 2026
Large Language Models (LLMs) have become an increasingly important tool in research and society at large. While LLMs are regularly used all over the world by experts and lay-people alike, they are predominantly developed with English-speaking users in mind, performing well in English and other wide-spread languages while less-resourced languages such as Luxembourgish are seen as a lower priority. This lack of attention is also reflected in the sparsity of available evaluation tools and datasets. In this study, we investigate the viability of language proficiency exams as such evaluation tools for the Luxembourgish language. We find that large models such as Claude and DeepSeek-R1 typically achieve high scores, while smaller models show weak performances. We also find that the performances in such language exams can be used to predict performances in other NLP tasks in Luxembourgish.
ltzGLUE: Luxembourgish General Language Understanding Evaluation
Alistair Plum | Felicia K\"orner | Anne-Marie Lutgen | Laura Bernardy | Fred Philippy | Emilia Milano | Nils Rehlinger | Cedric Lothritz | Tharindu Ranasinghe | Barbara Plank | Christoph Purschke
Findings of the Association for Computational Linguistics: ACL 2026
Alistair Plum | Felicia K\"orner | Anne-Marie Lutgen | Laura Bernardy | Fred Philippy | Emilia Milano | Nils Rehlinger | Cedric Lothritz | Tharindu Ranasinghe | Barbara Plank | Christoph Purschke
Findings of the Association for Computational Linguistics: ACL 2026
This paper presents ltzGLUE, the first Natural Language Understanding (NLU) benchmark for Luxembourgish (LTZ) based on the popular GLUE benchmark for English. Although NLU tasks are available for many european languages nowadays, LTZ is one of the official national languages that is often overlooked. We introduce new tasks and reuse existing ones to introduce the first official NLU benchmark and accompanying evaluation of encoder models for the language. Our tasks include common natural language processing tasks in binary and multi-class classification settings, including named entity recognition, topic classification, and intent classification. We evaluate various pre-trained language models for LTZ to present an overview of the current capabilities of these models on the LTZ language.