Using deep graph learning to improve dynamic analysis-based malware detection in PE files


연구 분야: Safety



학회: Journal of Computer Virology and Hacking Techniques


초록

Detecting zero-day malware in Windows PE files using dynamic analysis techniques has proven to be far more effective than traditional signature-based methods. One specific approach that has emerged in recent years is the use of graphs to represent executable behavior, which can be subsequently used to learn patterns. However, many current graph representations omit key parameter information, meaning that the behavioral impact of variable changes cannot be reliably understood. To combat these shortcomings, we present a new method for malware detection by applying a graph attention network on multi-edge directional heterogeneous graphs constructed from API calls. The experiments show the TPR and FPR scores demonstrated by our model, achieve better performance than those from other related works.


Author Profile
Minh Tu Nguyen

Faculty of Information Technology LeQuyDon Technical University 236 Hoang Quoc Viet Hanoi Vietnam

Vietnam
Author Profile
Viet Hung Nguyen

Faculty of Information Technology LeQuyDon Technical University 236 Hoang Quoc Viet Hanoi Vietnam

Vietnam
Author Profile
Nathan Shone

School of Computer Science & Mathematics Liverpool John Moores University Byrom Street Liverpool L3 3AF UK

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발행 연도 2023년
인용수 0
출판 국가 Vietnam
사이트 Springer
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