EGAN: Evolutional GAN for Ransomware Evasion


연구 분야: Strategies



학회: 2023 IEEE 48th Conference on Local Computer Networks (LCN)


초록

Adversarial Training is a proven defense strategy against adversarial malware. However, generating adversarial malware samples for this type of training presents a challenge because the resulting adversarial malware needs to remain evasive and functional. This work proposes an attack framework, EGAN, to address this limitation. EGAN leverages an Evolution Strategy and Generative A dversarial Network to select a sequence of attack actions that can mutate a Ransonware file while preserving its original functionality. We tested this framework on popular AI-powered commercial antivirus systems listed on VirusTotal and demonstrated that our framework is capable of bypassing the majority of these systems. Moreover, we evaluated whether the EGAN attack framework can evade other commercial non-AI antivirus solutions. Our results indicate that the adversarial ransonware generated can increase the probability of evading some of them.


Author Profile
Daniel Commey

Dept. Multidisciplinary Engineering Texas A&M University Texas USA

United States
Author Profile
Benjamin Appiah

Dept. Computer Science Ho Technical University Ho Ghana

Ghana
Author Profile
Bill K. Frimpong

Dept. Computer Science Ho Technical University Ho Ghana

Ghana

📄 논문 정보

발행 연도 2023년
인용수 1
출판 국가 Ghana, United States
사이트 IEEE
좋아요 수 0

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