Certifiably Robust Malware Detectors by Design


연구 분야: Safety



학회: IFIP International Conference on ICT Systems Security and Privacy Protection


초록

Malware analysis involves analyzing suspicious software to detect malicious payloads. Static malware analysis, which does not require software execution, relies increasingly on machine learning techniques to achieve scalability. Although such techniques obtain very high detection accuracy, they can be easily evaded with adversarial examples where a few modifications of the sample can dupe the detector without modifying the behavior of the software. Unlike other domains, such as computer vision, creating an adversarial example of malware without altering its functionality requires specific transformations. We propose a new model architecture for certifiably robust malware detection by design. In addition, we show that every robust detector can be decomposed into a specific structure, which can be applied to learn empirically robust malware detectors, even on fragile features. Our framework ERDALT is based on this structure. We compare and validate these approaches with machine-learning-based malware detection methods, allowing for robust detection with limited reduction of detection performance.


Author Profile
Mario Fritz

CISPA Helmholtz Center for Information Security Saarbrücken Germany

Germany
Author Profile
Pierre-François Gimenez

Univ. Rennes Inria IRISA CentraleSupélec Rennes France

France
Author Profile
Sarath Sivaprasad

CISPA Helmholtz Center for Information Security Saarbrücken Germany

Germany

📄 논문 정보

발행 연도 2025년
인용수 0
출판 국가 Germany, France
사이트 Springer
좋아요 수 0

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