Adversarial Deep Ensemble: Evasion Attacks and Defenses for Malware Detection
June 30, 2020 Β· Declared Dead Β· π IEEE Transactions on Information Forensics and Security
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Authors
Deqiang Li, Qianmu Li
arXiv ID
2006.16545
Category
cs.CR: Cryptography & Security
Cross-listed
cs.LG,
stat.ML
Citations
150
Venue
IEEE Transactions on Information Forensics and Security
Last Checked
4 months ago
Abstract
Malware remains a big threat to cyber security, calling for machine learning based malware detection. While promising, such detectors are known to be vulnerable to evasion attacks. Ensemble learning typically facilitates countermeasures, while attackers can leverage this technique to improve attack effectiveness as well. This motivates us to investigate which kind of robustness the ensemble defense or effectiveness the ensemble attack can achieve, particularly when they combat with each other. We thus propose a new attack approach, named mixture of attacks, by rendering attackers capable of multiple generative methods and multiple manipulation sets, to perturb a malware example without ruining its malicious functionality. This naturally leads to a new instantiation of adversarial training, which is further geared to enhancing the ensemble of deep neural networks. We evaluate defenses using Android malware detectors against 26 different attacks upon two practical datasets. Experimental results show that the new adversarial training significantly enhances the robustness of deep neural networks against a wide range of attacks, ensemble methods promote the robustness when base classifiers are robust enough, and yet ensemble attacks can evade the enhanced malware detectors effectively, even notably downgrading the VirusTotal service.
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