恶意软件
计算机科学
探测器
对抗制
人工智能
黑匣子
对抗性机器学习
机器学习
计算机安全
电信
作者
Jialai Wang,Wenjie Qu,Yi Rong,Han Qiu,Qi Li,Zongpeng Li,Chao Zhang
标识
DOI:10.1109/dac56929.2023.10247858
摘要
Machine learning (ML) based static malware detectors are widely deployed, but vulnerable to adversarial attacks. Unlike images or texts, tiny modifications to malware samples would significantly compromise their functionality. Consequently, existing attacks against images or texts will be significantly restricted when being deployed on malware detectors. In this work, we propose a hard-label black-box attack MPass against ML-based detectors. MPass employs a problem-space explainability method to locate critical positions of malware, applies adversarial modifications to such positions, and utilizes a runtime recovery technique to preserve the functionality. Experiments show MPass outperforms existing solutions and bypasses both state-of-the-art offline models and commercial ML-based antivirus products.
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