Honeyfile Camouflage: Hiding Fake Files in Plain Sight
Timmer, Roelien C., Liebowitz, David, Nepal, Surya, Kanhere, Salil S.
–arXiv.org Artificial Intelligence
Honeyfiles are a particularly useful type of honeypot: fake files deployed to detect and infer information from malicious behaviour. This paper considers the challenge of naming honeyfiles so they are camouflaged when placed amongst real files in a file system. Based on cosine distances in semantic vector spaces, we develop two metrics for filename camouflage: one based on simple averaging and one on clustering with mixture fitting. We evaluate and compare the metrics, showing that both perform well on a publicly available GitHub software repository dataset.
arXiv.org Artificial Intelligence
May-10-2024
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