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Hauptverfasser: Issaka, Sheriff, Zhang, Zhaoyi, Heda, Mihir, Wang, Keyi, Ajibola, Yinka, DeMar, Ryan, Du, Xuefeng
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2405.06818
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author Issaka, Sheriff
Zhang, Zhaoyi
Heda, Mihir
Wang, Keyi
Ajibola, Yinka
DeMar, Ryan
Du, Xuefeng
author_facet Issaka, Sheriff
Zhang, Zhaoyi
Heda, Mihir
Wang, Keyi
Ajibola, Yinka
DeMar, Ryan
Du, Xuefeng
contents Despite comprising one-third of global languages, African languages are critically underrepresented in Artificial Intelligence (AI), threatening linguistic diversity and cultural heritage. Ghanaian languages, in particular, face an alarming decline, with documented extinction and several at risk. This study pioneers a comprehensive survey of Natural Language Processing (NLP) research focused on Ghanaian languages, identifying methodologies, datasets, and techniques employed. Additionally, we create a detailed roadmap outlining challenges, best practices, and future directions, aiming to improve accessibility for researchers. This work serves as a foundational resource for Ghanaian NLP research and underscores the critical need for integrating global linguistic diversity into AI development.
format Preprint
id arxiv_https___arxiv_org_abs_2405_06818
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The Ghanaian NLP Landscape: A First Look
Issaka, Sheriff
Zhang, Zhaoyi
Heda, Mihir
Wang, Keyi
Ajibola, Yinka
DeMar, Ryan
Du, Xuefeng
Computation and Language
Despite comprising one-third of global languages, African languages are critically underrepresented in Artificial Intelligence (AI), threatening linguistic diversity and cultural heritage. Ghanaian languages, in particular, face an alarming decline, with documented extinction and several at risk. This study pioneers a comprehensive survey of Natural Language Processing (NLP) research focused on Ghanaian languages, identifying methodologies, datasets, and techniques employed. Additionally, we create a detailed roadmap outlining challenges, best practices, and future directions, aiming to improve accessibility for researchers. This work serves as a foundational resource for Ghanaian NLP research and underscores the critical need for integrating global linguistic diversity into AI development.
title The Ghanaian NLP Landscape: A First Look
topic Computation and Language
url https://arxiv.org/abs/2405.06818