Back to Search Start Over

ActDroid: An active learning framework for Android malware detection

Authors :
Muzaffar, Ali
Hassen, Hani Ragab
Zantout, Hind
Lones, Michael A
Publication Year :
2024

Abstract

The growing popularity of Android requires malware detection systems that can keep up with the pace of new software being released. According to a recent study, a new piece of malware appears online every 12 seconds. To address this, we treat Android malware detection as a streaming data problem and explore the use of active online learning as a means of mitigating the problem of labelling applications in a timely and cost-effective manner. Our resulting framework achieves accuracies of up to 96\%, requires as little of 24\% of the training data to be labelled, and compensates for concept drift that occurs between the release and labelling of an application. We also consider the broader practicalities of online learning within Android malware detection, and systematically explore the trade-offs between using different static, dynamic and hybrid feature sets to classify malware.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2401.16982
Document Type :
Working Paper