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Main Authors: Nkongolo, Mike, Vorster, Hilton, Warren, Josh, Naick, Trevor, Vanmali, Deandre, Mashapha, Masana, Brand, Luke, Fernandes, Alyssa, Calitz, Janco, Makhoba, Sibusiso
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.02799
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author Nkongolo, Mike
Vorster, Hilton
Warren, Josh
Naick, Trevor
Vanmali, Deandre
Mashapha, Masana
Brand, Luke
Fernandes, Alyssa
Calitz, Janco
Makhoba, Sibusiso
author_facet Nkongolo, Mike
Vorster, Hilton
Warren, Josh
Naick, Trevor
Vanmali, Deandre
Mashapha, Masana
Brand, Luke
Fernandes, Alyssa
Calitz, Janco
Makhoba, Sibusiso
contents Low-resource African languages remain underrepresented in sentiment analysis, limiting both lexical coverage and the performance of multilingual Natural Language Processing (NLP) systems. This study proposes TriLex, a three-stage retrieval augmented framework that unifies corpus-based extraction, cross lingual mapping, and retrieval augmented generation (RAG) driven lexical refinement to systematically expand sentiment lexicons for low-resource languages. Using the enriched lexicon, the performance of two prominent African pretrained language models (AfroXLMR and AfriBERTa) is evaluated across multiple case studies. Results demonstrate that AfroXLMR delivers superior performance, achieving F1-scores above 80% for isiXhosa and isiZulu and exhibiting strong cross-lingual stability. Although AfriBERTa lacks pre-training on these target languages, it still achieves reliable F1-scores around 64%, validating its utility in computationally constrained settings. Both models outperform traditional machine learning baselines, and ensemble analyses further enhance precision and robustness. The findings establish TriLex as a scalable and effective framework for multilingual sentiment lexicon expansion and sentiment modeling in low-resource South African languages.
format Preprint
id arxiv_https___arxiv_org_abs_2512_02799
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TriLex: A Framework for Multilingual Sentiment Analysis in Low-Resource South African Languages
Nkongolo, Mike
Vorster, Hilton
Warren, Josh
Naick, Trevor
Vanmali, Deandre
Mashapha, Masana
Brand, Luke
Fernandes, Alyssa
Calitz, Janco
Makhoba, Sibusiso
Computation and Language
Low-resource African languages remain underrepresented in sentiment analysis, limiting both lexical coverage and the performance of multilingual Natural Language Processing (NLP) systems. This study proposes TriLex, a three-stage retrieval augmented framework that unifies corpus-based extraction, cross lingual mapping, and retrieval augmented generation (RAG) driven lexical refinement to systematically expand sentiment lexicons for low-resource languages. Using the enriched lexicon, the performance of two prominent African pretrained language models (AfroXLMR and AfriBERTa) is evaluated across multiple case studies. Results demonstrate that AfroXLMR delivers superior performance, achieving F1-scores above 80% for isiXhosa and isiZulu and exhibiting strong cross-lingual stability. Although AfriBERTa lacks pre-training on these target languages, it still achieves reliable F1-scores around 64%, validating its utility in computationally constrained settings. Both models outperform traditional machine learning baselines, and ensemble analyses further enhance precision and robustness. The findings establish TriLex as a scalable and effective framework for multilingual sentiment lexicon expansion and sentiment modeling in low-resource South African languages.
title TriLex: A Framework for Multilingual Sentiment Analysis in Low-Resource South African Languages
topic Computation and Language
url https://arxiv.org/abs/2512.02799