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Improving robustness of ML classifiers against realizable evasion attacks using conserved features

  • Liang Tong
  • , Bo Li
  • , Ning Zhang
  • , Chen Hajaj
  • , Chaowei Xiao
  • , Yevgeniy Vorobeychik

نتاج البحث: فصل من :كتاب / تقرير / مؤتمرمنشور من مؤتمرمراجعة النظراء

79 اقتباسات (Scopus)

ملخص

Machine learning (ML) techniques are increasingly common in security applications, such as malware and intrusion detection. However, ML models are often susceptible to evasion attacks, in which an adversary makes changes to the input (such as malware) in order to avoid being detected. A conventional approach to evaluate ML robustness to such attacks, as well as to design robust ML, is by considering simplified feature-space models of attacks, where the attacker changes ML features directly to effect evasion, while minimizing or constraining the magnitude of this change. We investigate the effectiveness of this approach to designing robust ML in the face of attacks that can be realized in actual malware (realizable attacks). We demonstrate that in the context of structure-based PDF malware detection, such techniques appear to have limited effectiveness, but they are effective with content-based detectors. In either case, we show that augmenting the feature space models with conserved features (those that cannot be unilaterally modified without compromising malicious functionality) significantly improves performance. Finally, we show that feature space models enable generalized robustness when faced with a variety of realizable attacks, as compared to classifiers which are tuned to be robust to a specific realizable attack.

اللغة الأصليةالإنجليزيّة
عنوان منشور المضيفProceedings of the 28th USENIX Security Symposium
الصفحات285-302
عدد الصفحات18
رقم المعيار الدولي للكتب (الإلكتروني)9781939133069
حالة النشرنُشِر - 2019
الحدث28th USENIX Security Symposium, USENIX Security 2019 - Santa Clara, الولايات المتّحدة
المدة: ١٤ أغسطس ٢٠١٩١٦ أغسطس ٢٠١٩

سلسلة المنشورات

الاسمProceedings of the 28th USENIX Security Symposium

!!Conference

!!Conference28th USENIX Security Symposium, USENIX Security 2019
الدولة/الإقليمالولايات المتّحدة
المدينةSanta Clara
المدة١٤/٠٨/١٩١٦/٠٨/١٩

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