Towards a More Inclusive AI: Progress and Perspectives in Large Language Model Training for the S\'ami Language
Ronny Paul, Himanshu Buckchash, Shantipriya Parida, Dilip K. Prasad

TL;DR
This paper explores training large language models for the Sámí language, an ultra low resource language, by compiling web resources and experimenting with different multilingual training strategies to improve inclusion in AI language modeling.
Contribution
It is the first study to adapt non-statistical NLP models for Sámí, highlighting effective multilingual training methods for ULR languages.
Findings
Decoder-only models outperform joint multilingual training.
Multilingual training with high semantic overlap performs better.
First application of modern LLMs to Sámí language.
Abstract
S\'ami, an indigenous language group comprising multiple languages, faces digital marginalization due to the limited availability of data and sophisticated language models designed for its linguistic intricacies. This work focuses on increasing technological participation for the S\'ami language. We draw the attention of the ML community towards the language modeling problem of Ultra Low Resource (ULR) languages. ULR languages are those for which the amount of available textual resources is very low, and the speaker count for them is also very low. ULRLs are also not supported by mainstream Large Language Models (LLMs) like ChatGPT, due to which gathering artificial training data for them becomes even more challenging. Mainstream AI foundational model development has given less attention to this category of languages. Generally, these languages have very few speakers, making it hard to…
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Taxonomy
TopicsNatural Language Processing Techniques
