The digital exclusion of endangered languages remains a critical challenge in NLP, limiting both linguistic research and revitalization efforts. This study introduces the first computational investigation of Comanche, an Uto-Aztecan language on the verge of extinction, demonstrating how minimal-cost, community-informed NLP interventions can support language preservation. We present a manually curated dataset of 412 phrases, a synthetic data generation pipeline, and an empirical evaluation of GPT-4o and GPT-4o-mini for language identification. Our experiments reveal that while LLMs struggle with Comanche in zero-shot settings, few-shot prompting significantly improves performance, achieving near-perfect accuracy with just five examples. Our findings highlight the potential of targeted NLP methodologies in low-resource contexts and emphasize that visibility is the first step toward inclusion. By establishing a foundation for Comanche in NLP, we advocate for computational approaches that prioritize accessibility, cultural sensitivity, and community engagement.
Cite
@article{arxiv.2505.18159,
title = {Advancing Uto-Aztecan Language Technologies: A Case Study on the Endangered Comanche Language},
author = {Jesus Alvarez C and Daua D. Karajeanes and Ashley Celeste Prado and John Ruttan and Ivory Yang and Sean O'Brien and Vasu Sharma and Kevin Zhu},
journal= {arXiv preprint arXiv:2505.18159},
year = {2025}
}
Comments
11 pages, 13 figures; published in Proceedings of the Fifth Workshop on NLP for Indigenous Languages of the Americas (AmericasNLP 2025) at NAACL 2025, Albuquerque, NM