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Pre-Trained Transformer-Based Models for Text Classification Using Low-Resourced Ewe Language

Victor Kwaku Agbesi, Wenyu Chen, Sophyani Banaamwini Yussif, Md Altab Hossin, Chiagoziem C. Ukwuoma, Noble Arden Kuadey, Collinson Colin M. Agbesi, Nagwan Abdel Samee, Mona Jamjoom, Mugahed A. Al–antari

2023Systems15 citationsDOIOpen Access PDF

Abstract

Despite a few attempts to automatically crawl Ewe text from online news portals and magazines, the African Ewe language remains underdeveloped despite its rich morphology and complex "unique" structure. This is due to the poor quality, unbalanced, and religious-based nature of the crawled Ewe texts, thus making it challenging to preprocess and perform any NLP task with current transformer-based language models. In this study, we present a well-preprocessed Ewe dataset for low-resource text classification to the research community. Additionally, we have developed an Ewe-based word embedding to leverage the low-resource semantic representation. Finally, we have fine-tuned seven transformer-based models, namely BERT-based (cased and uncased), DistilBERT-based (cased and uncased), RoBERTa, DistilRoBERTa, and DeBERTa, using the preprocessed Ewe dataset that we have proposed. Extensive experiments indicate that the fine-tuned BERT-base-cased model outperforms all baseline models with an accuracy of 0.972, precision of 0.969, recall of 0.970, loss score of 0.021, and an F1-score of 0.970. This performance demonstrates the model’s ability to comprehend the low-resourced Ewe semantic representation compared to all other models, thus setting the fine-tuned BERT-based model as the benchmark for the proposed Ewe dataset.

Topics & Concepts

TransformerLeverage (statistics)Computer scienceLanguage modelArtificial intelligenceNatural language processingWord embeddingF1 scoreEmbeddingBenchmark (surveying)GeographyEngineeringCartographyVoltageElectrical engineeringText and Document Classification TechnologiesReligion and Sociopolitical Dynamics in NigeriaTopic Modeling
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