Title of article :
A STUDY OF MACHINE LEARNING CLASSIFIERS FOR ANOMALY-BASED MOBILE BOTNET DETECTION
Author/Authors :
Feizollah, Ali university of malaya - Security Research Group (SECReg), Malaysia , Anuar, Nor Badrul university of malaya - Faculty of Computer Science and Information Technology - Security Research Group (SECReg), Malaysia , Salleh, Rosli university of malaya - Faculty of Computer Science and Information Technology - Security Research Group (SECReg), Malaysia , Amalina, Fairuz university of malaya - Mobile Cloud Computing (MCC), Malaysia , Ma’arof, Ra’uf Ridzuan F-Secure Corporation, Malaysia , Shamshirband, Shahaboddin islamic azad university - Department of Computer Science, ايران
From page :
251
To page :
265
Abstract :
In recent years, mobile devices are ubiquitous. They are employed for purposes beyond merely making phone calls. Among the mobile operating systems, Android is the most popular due to its availability as an open source operating system. Due to the proliferation of Android malwares, it is crucial to study the best classifiers that can detect these malwares effectively and accurately through selecting the most suitable network traffic features as well as comprehensive comparison with related works. This study evaluates five machine learning classifiers, namely Naïve Bayes, k-nearest neighbour, decision tree, multi-layer perceptron, and support vector machine. The evaluation was validated using malware data samples from the Android Malware Genome Project. The data sample is a collection of malwares gathered between August 2010 and October 2011 by the University of North Carolina. Among various network traffic characteristics, three network features were selected: connection duration, TCP size and number of GET/POST parameters. From the experiment, it is found that knearest neighbour provides the optimum results in terms of performance among the classifiers. The experimental results also indicate a true positive rate as high as 99.94% and false positive of 0.06% for the k-nearest neighbour classifier.
Keywords :
Mobile botnet , machine learning classifiers , anomaly , based detection , intrusion detection systems
Journal title :
Malaysian Journal of Computer Science
Journal title :
Malaysian Journal of Computer Science
Record number :
2571953
Link To Document :
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