TY - JOUR AU - Enkono, Fillemon S AU - Suresh, Nalina PY - 2020/06/30 Y2 - 2024/03/28 TI - Application of Machine Learning Classification to Detect Fraudulent E‑wallet Deposit Notification SMSes JF - The African Journal of Information and Communication (AJIC) JA - Afr. j. inf. commun. (Online) VL - IS - 25 SE - Research Articles DO - 10.23962/10539/29195 UR - https://ajic.wits.ac.za/article/view/13539 SP - AB - <p>Fraudulent e-wallet deposit notification SMSes designed to steal money and goods from m-banking users have become pervasive in Namibia. Motivated by an observed lack of mobile applications to protect users from such deceptions, this study evaluated the ability of machine learning to detect the fraudulent e-wallet deposit notification SMSes. The naïve Bayes (NB) and support vector machine (SVM) classifiers were trained to classify both ham (desired) SMSes and scam (fraudulent) e-wallet deposit notification SMSes. The performances of the two classifier models were then evaluated. The results revealed that the SVM classifier model could detect the fraudulent SMSes more efficiently than the NB classifier.</p> ER -