An Enhanced Machine Learning with NLP Modelling Technique for Smishing Attacks Detection in Low-Resourced Languages

dc.contributor.authorAaron Zimba
dc.contributor.authorKatongo Ongani Phiri
dc.date.accessioned2025-12-01T13:59:27Z
dc.date.issued2025
dc.descriptionRESEARCH PAPERS AND JOURNAL ARTICLES
dc.description.abstractSmishing, a form of phishing through SMS, has emerged as a significant cybersecurity threat, particularly on mobile money platforms in regions with limited cybersecurity awareness. This research introduces a robust machine learning model integrated with advanced natural language processing (NLP) techniques for effective smishing detection. The proposed model targets English and Bemba, a low-resourced language, addressing a critical gap in cybersecurity research for inguistically diverse, resource-constrained environments.
dc.description.sponsorshipZCAS UNIVERSITY
dc.identifier.citationHARVARD REFRENCING
dc.identifier.urihttp://dspace.zcas.edu.zm/handle/123456789/95
dc.language.isoen_US
dc.subjectpseudonymization
dc.subjectlow-resourced language
dc.subjectadversarial training
dc.subjectmobile money
dc.subjectplatforms
dc.subjectdata privacy
dc.titleAn Enhanced Machine Learning with NLP Modelling Technique for Smishing Attacks Detection in Low-Resourced Languages
dc.typeArticle

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