Alex V. Mbaziira

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1paper
176citations

1 Paper

1.2SIAug 17, 2015
Evaluating Classifiers in Detecting 419 Scams in Bilingual Cybercriminal Communities

Alex V. Mbaziira, Ehab Abozinadah, James H. Jones

Incidents of organized cybercrime are rising because of criminals are reaping high financial rewards while incurring low costs to commit crime. As the digital landscape broadens to accommodate more internet-enabled devices and technologies like social media, more cybercriminals who are not native English speakers are invading cyberspace to cash in on quick exploits. In this paper we evaluate the performance of three machine learning classifiers in detecting 419 scams in a bilingual Nigerian cybercriminal community. We use three popular classifiers in text processing namely: Naïve Bayes, k-nearest neighbors (IBK) and Support Vector Machines (SVM). The preliminary results on a real world dataset reveal the SVM significantly outperforms Naïve Bayes and IBK at 95% confidence level.