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Malware Makeover: Breaking ML-based Static Analysis by Modifying Executable Bytes

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Lucas, K; Sharif, M; Bauer, L; Reiter, MK; Shintre, S
December 19, 2019

Motivated by the transformative impact of deep neural networks (DNNs) in various domains, researchers and anti-virus vendors have proposed DNNs for malware detection from raw bytes that do not require manual feature engineering. In this work, we propose an attack that interweaves binary-diversification techniques and optimization frameworks to mislead such DNNs while preserving the functionality of binaries. Unlike prior attacks, ours manipulates instructions that are a functional part of the binary, which makes it particularly challenging to defend against. We evaluated our attack against three DNNs in white- and black-box settings, and found that it often achieved success rates near 100%. Moreover, we found that our attack can fool some commercial anti-viruses, in certain cases with a success rate of 85%. We explored several defenses, both new and old, and identified some that can foil over 80% of our evasion attempts. However, these defenses may still be susceptible to evasion by attacks, and so we advocate for augmenting malware-detection systems with methods that do not rely on machine learning.

Duke Scholars

Publication Date

December 19, 2019
 

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Lucas, K., Sharif, M., Bauer, L., Reiter, M. K., & Shintre, S. (2019). Malware Makeover: Breaking ML-based Static Analysis by Modifying Executable Bytes.
Lucas, Keane, Mahmood Sharif, Lujo Bauer, Michael K. Reiter, and Saurabh Shintre. “Malware Makeover: Breaking ML-based Static Analysis by Modifying Executable Bytes,” December 19, 2019.
Lucas K, Sharif M, Bauer L, Reiter MK, Shintre S. Malware Makeover: Breaking ML-based Static Analysis by Modifying Executable Bytes. 2019 Dec.
Lucas K, Sharif M, Bauer L, Reiter MK, Shintre S. Malware Makeover: Breaking ML-based Static Analysis by Modifying Executable Bytes. 2019 Dec.

Publication Date

December 19, 2019