Anti-malware engines under adversarial attacks

被引:2
|
作者
Selvaganapathy S. [1 ]
Sadasivam S. [2 ]
机构
[1] Department of Information Technology, PSG College of Technology, Coimbatore
[2] Department of Computer Science and Engineering, PSG College of Technology, Coimbatore
关键词
adversarial attacks; Android; deep neural network; Evasion attacks; malware detection;
D O I
10.1080/1206212X.2021.1940744
中图分类号
学科分类号
摘要
Mobile phones have crawled into our lives with such rapidity and have reformed our lives in a short span. Malware is entangled with all forms of mobile applications causing havoc and distress. State of the art malware detection systems have exercised learning-based techniques successfully to discriminate benign contents from malware. But, Machine Learning (ML) models are vulnerable to adversarial samples and are not intrinsically robust against adversarial attacks. The adversarial samples generated against ML models degrade the model's performance. Adversarial attacks are utilized by malware authors to hinder the working of ML-based malware detection approaches. This article coheres into the effects of evasion attacks on an anti-malware engine utilizing a feed forward deep neural network model. Experiments on Android malware apps is explored by structuring a comprehensive feature engineering scheme for the Drebin dataset through static analysis. The results demonstrate the realistic threat and demand the need to develop adaptive defenses to foster a secure learning model which is immune to adversarial attacks. © 2021 Informa UK Limited, trading as Taylor & Francis Group.
引用
收藏
页码:791 / 804
页数:13
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