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AfroLID: A Neural Language Identification Tool for African Languages

Ife Adebara, AbdelRahim Elmadany, Muhammad Abdul-Mageed, Alcides Alcoba Inciarte

202215 citationsDOIOpen Access PDF

Abstract

Language identification (LID) is a crucial precursor for NLP, especially for mining web data. Problematically, most of the world's 7000+ languages today are not covered by LID technologies. We address this pressing issue for Africa by introducing AfroLID, a neural LID toolkit for 517 African languages and varieties. AfroLID exploits a multi-domain web dataset manually curated from across 14 language families utilizing five orthographic systems. When evaluated on our blind Test set, AfroLID achieves 95.89 F_1-score. We also compare AfroLID to five existing LID tools that each cover a small number of African languages, finding it to outperform them on most languages. We further show the utility of AfroLID in the wild by testing it on the acutely under-served Twitter domain. Finally, we offer a number of controlled case studies and perform a linguistically-motivated error analysis that allow us to both showcase AfroLID's powerful capabilities and limitations

Topics & Concepts

Computer scienceDomain (mathematical analysis)Identification (biology)Natural language processingSet (abstract data type)Cover (algebra)Artificial intelligenceExploitLanguage identificationNatural languageProgramming languageEngineeringMechanical engineeringBiologyMathematicsBotanyComputer securityMathematical analysisAuthorship Attribution and ProfilingHate Speech and Cyberbullying DetectionNatural Language Processing Techniques
AfroLID: A Neural Language Identification Tool for African Languages | Litcius