arXiv Open Access 2023

AI ATAC 1: An Evaluation of Prominent Commercial Malware Detectors

Robert A. Bridges Brian Weber Justin M. Beaver Jared M. Smith Miki E. Verma +9 lainnya
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Abstrak

This work presents an evaluation of six prominent commercial endpoint malware detectors, a network malware detector, and a file-conviction algorithm from a cyber technology vendor. The evaluation was administered as the first of the Artificial Intelligence Applications to Autonomous Cybersecurity (AI ATAC) prize challenges, funded by / completed in service of the US Navy. The experiment employed 100K files (50/50% benign/malicious) with a stratified distribution of file types, including ~1K zero-day program executables (increasing experiment size two orders of magnitude over previous work). We present an evaluation process of delivering a file to a fresh virtual machine donning the detection technology, waiting 90s to allow static detection, then executing the file and waiting another period for dynamic detection; this allows greater fidelity in the observational data than previous experiments, in particular, resource and time-to-detection statistics. To execute all 800K trials (100K files $\times$ 8 tools), a software framework is designed to choreographed the experiment into a completely automated, time-synced, and reproducible workflow with substantial parallelization. A cost-benefit model was configured to integrate the tools' recall, precision, time to detection, and resource requirements into a single comparable quantity by simulating costs of use. This provides a ranking methodology for cyber competitions and a lens through which to reason about the varied statistical viewpoints of the results. These statistical and cost-model results provide insights on state of commercial malware detection.

Topik & Kata Kunci

Penulis (14)

R

Robert A. Bridges

B

Brian Weber

J

Justin M. Beaver

J

Jared M. Smith

M

Miki E. Verma

S

Savannah Norem

K

Kevin Spakes

C

Cory Watson

J

Jeff A. Nichols

B

Brian Jewell

M

Michael. D. Iannacone

C

Chelsey Dunivan Stahl

K

Kelly M. T. Huffer

T

T. Sean Oesch

Format Sitasi

Bridges, R.A., Weber, B., Beaver, J.M., Smith, J.M., Verma, M.E., Norem, S. et al. (2023). AI ATAC 1: An Evaluation of Prominent Commercial Malware Detectors. https://arxiv.org/abs/2308.14835

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2023
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en
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arXiv
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Open Access ✓