4.5 Article

Lightweight, Effective Detection and Characterization of Mobile Malware Families

期刊

IEEE TRANSACTIONS ON COMPUTERS
卷 71, 期 11, 页码 2982-2995

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TC.2022.3143439

关键词

Malware; Feature extraction; Codes; Measurement; Static analysis; Smart phones; Electronic mail; Android; malware; code metrics; classification; static analysis

资金

  1. [3910-1007-00]

向作者/读者索取更多资源

Android malware poses a constant threat to smart devices, but a new method called DroidMalVet has been developed to accurately detect and classify various Android malware families, even in scenarios with limited samples.
Android malware is an ongoing threat to billions of smart devices' security, ranging from mobile phones to car infotainment systems. Despite numerous approaches and previous studies to develop solutions for detecting and preventing Android malware, the rapid continuous development of new malware variants requires a careful reconsideration and the development of effective methods to identify malware families given a meager number of malware instances. In this paper, we present DroidMalVet, a novel Android malware family classification and detection approach that does not require to perform complex program analyses or utilize large feature sets. DroidMalVet is the first to use a promising, diverse, and small set of software metrics as features in a supervised learning platform to classify and detect various Android malware families. Our extensive empirical evaluations on two large public malware datasets show that DroidMalVet accurately detects both small and large malware families with F-Score accuracy of 94.4% and 96%, and AUC equal to 99.5% and 99.7% on the malware families in Drebin and AMD datasets, respectively. Moreover, our results demonstrate the superior performance of DroidMalVet in detecting small families (i.e., families with few samples). DroidMalVet complements existing approaches and presents an early warning tool for detecting known and emerging malware families.

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