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Advances in Information Security

Deceiving ML-Based Friend-or-Foe Identification for Executables

Publication ,  Chapter
Lucas, K; Sharif, M; Bauer, L; Reiter, MK; Shintre, S
January 1, 2023

Deceiving an adversary who may, e.g., attempt to reconnoiter a system before launching an attack, typically involves changing the system’s behavior such that it deceives the attacker while still permitting the system to perform its intended function. We develop techniques to achieve such deception by studying a proxy problem: malware detection. 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

DOI

Publication Date

January 1, 2023

Volume

89

Start / End Page

217 / 249
 

Citation

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Lucas, K., Sharif, M., Bauer, L., Reiter, M. K., & Shintre, S. (2023). Deceiving ML-Based Friend-or-Foe Identification for Executables. In Advances in Information Security (Vol. 89, pp. 217–249). https://doi.org/10.1007/978-3-031-16613-6_10
Lucas, K., M. Sharif, L. Bauer, M. K. Reiter, and S. Shintre. “Deceiving ML-Based Friend-or-Foe Identification for Executables.” In Advances in Information Security, 89:217–49, 2023. https://doi.org/10.1007/978-3-031-16613-6_10.
Lucas K, Sharif M, Bauer L, Reiter MK, Shintre S. Deceiving ML-Based Friend-or-Foe Identification for Executables. In: Advances in Information Security. 2023. p. 217–49.
Lucas, K., et al. “Deceiving ML-Based Friend-or-Foe Identification for Executables.” Advances in Information Security, vol. 89, 2023, pp. 217–49. Scopus, doi:10.1007/978-3-031-16613-6_10.
Lucas K, Sharif M, Bauer L, Reiter MK, Shintre S. Deceiving ML-Based Friend-or-Foe Identification for Executables. Advances in Information Security. 2023. p. 217–249.

DOI

Publication Date

January 1, 2023

Volume

89

Start / End Page

217 / 249