Query-Efficient Black-Box Attack Against Sequence-Based Malware Classifiers


연구 분야: Strategies



학회: ACSAC '20: Proceedings of the 36th Annual Computer Security Applications Conference


초록

In this paper, we present a generic, query-efficient black-box attack against API call-based machine learning malware classifiers. We generate adversarial examples by modifying the malware’s API call sequences and non-sequential features (printable strings), and these adversarial examples will be misclassified by the target malware classifier without affecting the malware’s functionality. In contrast to previous studies, our attack minimizes the number of malware classifier queries required. In addition, in our attack, the attacker must only know the class predicted by the malware classifier; attacker knowledge of the malware classifier’s confidence score is optional. We evaluate the attack effectiveness when attacks are performed against a variety of malware classifier architectures, including recurrent neural network (RNN) variants, deep neural networks, support vector machines, and gradient boosted decision trees. Our attack success rate is around 98% when the classifier’s confidence score is known and 64% when just the classifier’s predicted class is known. We implement four state-of-the-art query-efficient attacks and show that our attack requires fewer queries and less knowledge about the attacked model’s architecture than other existing query-efficient attacks, making it practical for attacking cloud-based malware classifiers at a minimal cost.


Author Profile
Asaf Shabtai

Ben-Gurion University of the Negev

Benin
Author Profile
Lior Rokach

Ben-Gurion University of the Negev

Benin
Author Profile
Ishai Rosenberg

Ben-Gurion University of the Negev Israel

Benin

📄 논문 정보

발행 연도 2020년
인용수 35
출판 국가 Benin
사이트 ACM
좋아요 수 0

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