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Main Authors: Ajayi, Edward, Umwari, Eudoxie, Deku, Mawuli, Singadi, Prosper, Udahemuka, Jules, Tadele, Bekalu, Edeh, Chukuemeka
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.01557
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author Ajayi, Edward
Umwari, Eudoxie
Deku, Mawuli
Singadi, Prosper
Udahemuka, Jules
Tadele, Bekalu
Edeh, Chukuemeka
author_facet Ajayi, Edward
Umwari, Eudoxie
Deku, Mawuli
Singadi, Prosper
Udahemuka, Jules
Tadele, Bekalu
Edeh, Chukuemeka
contents This study examines the digital representation of African languages and the challenges this presents for current language detection tools. We evaluate their performance on Yoruba, Kinyarwanda, and Amharic. While these languages are spoken by millions, their online usage on conversational platforms is often sparse, heavily influenced by English, and not representative of the authentic, monolingual conversations prevalent among native speakers. This lack of readily available authentic data online creates a challenge of scarcity of conversational data for training language models. To investigate this, data was collected from subreddits and local news sources for each language. The analysis showed a stark contrast between the two sources. Reddit data was minimal and characterized by heavy code-switching. Conversely, local news media offered a robust source of clean, monolingual language data, which also prompted more user engagement in the local language on the news publishers social media pages. Language detection models, including the specialized AfroLID and a general LLM, performed with near-perfect accuracy on the clean news data but struggled with the code-switched Reddit posts. The study concludes that professionally curated news content is a more reliable and effective source for training context-rich AI models for African languages than data from conversational platforms. It also highlights the need for future models that can process clean and code-switched text to improve the detection accuracy for African languages.
format Preprint
id arxiv_https___arxiv_org_abs_2512_01557
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Language Diversity: Evaluating Language Usage and AI Performance on African Languages in Digital Spaces
Ajayi, Edward
Umwari, Eudoxie
Deku, Mawuli
Singadi, Prosper
Udahemuka, Jules
Tadele, Bekalu
Edeh, Chukuemeka
Computation and Language
This study examines the digital representation of African languages and the challenges this presents for current language detection tools. We evaluate their performance on Yoruba, Kinyarwanda, and Amharic. While these languages are spoken by millions, their online usage on conversational platforms is often sparse, heavily influenced by English, and not representative of the authentic, monolingual conversations prevalent among native speakers. This lack of readily available authentic data online creates a challenge of scarcity of conversational data for training language models. To investigate this, data was collected from subreddits and local news sources for each language. The analysis showed a stark contrast between the two sources. Reddit data was minimal and characterized by heavy code-switching. Conversely, local news media offered a robust source of clean, monolingual language data, which also prompted more user engagement in the local language on the news publishers social media pages. Language detection models, including the specialized AfroLID and a general LLM, performed with near-perfect accuracy on the clean news data but struggled with the code-switched Reddit posts. The study concludes that professionally curated news content is a more reliable and effective source for training context-rich AI models for African languages than data from conversational platforms. It also highlights the need for future models that can process clean and code-switched text to improve the detection accuracy for African languages.
title Language Diversity: Evaluating Language Usage and AI Performance on African Languages in Digital Spaces
topic Computation and Language
url https://arxiv.org/abs/2512.01557