Multi-label Classification for Android Malware Based on Active Learning
Abstract
The existing malware classification approaches (i.e., binary and family classification) can barely benefit subsequent analysis with their outputs. Even the family classification approaches suffer from lacking a formal naming standard and an incomplete definition of malicious behaviors. More importantly, the existing approaches are powerless for one malware with multiple malicious behaviors, while this is a very common phenomenon for Android malware in the wild. So, neither of them can provide researchers with a direct and comprehensive enough understanding of malware. In this paper, we propose MLCDroid, an ML-based multi-label classification approach that can directly indicate the existence of pre-defined malicious behaviors. With an in-depth analysis, we summarize six basic malicious behaviors from real-world malware with security reports and construct a labeled dataset. We compare the results of 70 algorithm combinations to evaluate the effectiveness (best at 73.3%). Faced with the challenge of the expensive cost of data annotation, we further propose an active learning approach based on data augmentation, which can improve the overall accuracy to 86.7% with a data augmentation of 5,000+ high-quality samples from an unlabeled malware dataset. This is the first multi-label Android malware classification approach intending to provide more information on fine-grained malicious behaviors.
Cite
@article{arxiv.2410.06444,
title = {Multi-label Classification for Android Malware Based on Active Learning},
author = {Qijing Qiao and Ruitao Feng and Sen Chen and Fei Zhang and Xiaohong Li},
journal= {arXiv preprint arXiv:2410.06444},
year = {2024}
}
Comments
18 pages, in IEEE Transactions on Dependable and Secure Computing, 2022