Android Malware Detection Using Parallel Machine Learning Classifiers
July 27, 2016 Β· Declared Dead Β· π 2014 Eighth International Conference on Next Generation Mobile Apps, Services and Technologies
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Authors
Suleiman Y. Yerima, Sakir Sezer, Igor Muttik
arXiv ID
1607.08186
Category
cs.CR: Cryptography & Security
Cross-listed
cs.AI
Citations
138
Venue
2014 Eighth International Conference on Next Generation Mobile Apps, Services and Technologies
Last Checked
4 months ago
Abstract
Mobile malware has continued to grow at an alarming rate despite on-going efforts towards mitigating the problem. This has been particularly noticeable on Android due to its being an open platform that has subsequently overtaken other platforms in the share of the mobile smart devices market. Hence, incentivizing a new wave of emerging Android malware sophisticated enough to evade most common detection methods. This paper proposes and investigates a parallel machine learning based classification approach for early detection of Android malware. Using real malware samples and benign applications, a composite classification model is developed from parallel combination of heterogeneous classifiers. The empirical evaluation of the model under different combination schemes demonstrates its efficacy and potential to improve detection accuracy. More importantly, by utilizing several classifiers with diverse characteristics, their strengths can be harnessed not only for enhanced Android malware detection but also quicker white box analysis by means of the more interpretable constituent classifiers.
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