An RNN trained unsupervised on benign hardware counter traces detects multiple unseen attacks including Meltdown, Spectre, Rowhammer and Zombieload with F-score 0.9970.
Generic Black-Box End-to-End Attack Against State of the Art API Call Based Malware Classifiers
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abstract
In this paper, we present a black-box attack against API call based machine learning malware classifiers, focusing on generating adversarial sequences combining API calls and static features (e.g., printable strings) that will be misclassified by the classifier without affecting the malware functionality. We show that this attack is effective against many classifiers due to the transferability principle between RNN variants, feed forward DNNs, and traditional machine learning classifiers such as SVM. We also implement GADGET, a software framework to convert any malware binary to a binary undetected by malware classifiers, using the proposed attack, without access to the malware source code.
fields
cs.CR 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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FortuneTeller: Predicting Microarchitectural Attacks via Unsupervised Deep Learning
An RNN trained unsupervised on benign hardware counter traces detects multiple unseen attacks including Meltdown, Spectre, Rowhammer and Zombieload with F-score 0.9970.