N-opcode Analysis for Android Malware Classification and Categorization
July 27, 2016 Β· Declared Dead Β· π International Conference on Cyber Security And Protection Of Digital Services
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Authors
BooJoong Kang, Suleiman Y. Yerima, Kieran McLaughlin, Sakir Sezer
arXiv ID
1607.08149
Category
cs.CR: Cryptography & Security
Cross-listed
cs.AI
Citations
102
Venue
International Conference on Cyber Security And Protection Of Digital Services
Last Checked
4 months ago
Abstract
Malware detection is a growing problem particularly on the Android mobile platform due to its increasing popularity and accessibility to numerous third party app markets. This has also been made worse by the increasingly sophisticated detection avoidance techniques employed by emerging malware families. This calls for more effective techniques for detection and classification of Android malware. Hence, in this paper we present an n-opcode analysis based approach that utilizes machine learning to classify and categorize Android malware. This approach enables automated feature discovery that eliminates the need for applying expert or domain knowledge to define the needed features. Our experiments on 2520 samples that were performed using up to 10-gram opcode features showed that an f-measure of 98% is achievable using this approach.
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