Android Malware Detection Via (Somewhat) Robust Irreversible Feature Transformations

IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY(2020)

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摘要
As the most widely used OS on earth, Android is heavily targeted by malicious hackers. Though much work has been done on detecting Android malware, hackers are becoming increasingly adept at evading ML classifiers. We develop FARM, a Feature transformation based AndRoid Malware detector. FARM takes well-known features for Android malware detection and introduces three new types of feature transformations that transform these features irreversibly into a new feature domain. We first test FARM on 6 Android classification problems separating goodware and "other malware" from 3 classes of malware: rooting malware, spyware, and banking trojans. We show that FARM beats standard baselines when no attacks occur. Though we cannot guess all possible attacks that an adversary might use, we propose three realistic attacks on FARM and show that FARM is very robust to these attacks in all classification problems. Additionally, FARM has automatically identified two malware samples which were not previously classified as rooting malware by any of the 61 anti-viruses on VirusTotal. These samples were reported to Google's Android Security Team who subsequently confirmed our findings.
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关键词
Android, machine learning, feature transformation, malware detection, spyware, Banking Trojans, rooting malware
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