Detection under Privileged Information
Z. Berkay Celik, Patrick McDaniel, Rauf Izmailov, Nicolas Papernot,, Ryan Sheatsley, Raquel Alvarez, Ananthram Swami

TL;DR
This paper introduces a novel detection approach that leverages privileged information available only during training to enhance accuracy and robustness across various security domains.
Contribution
It adapts knowledge transfer and distillation techniques to incorporate privileged data, improving detection performance over traditional models.
Findings
Up to 7.7% reduction in detection error for bot detection
Up to 8.6% reduction in malware traffic detection errors
Up to 16.9% reduction in face recognition errors
Abstract
For well over a quarter century, detection systems have been driven by models learned from input features collected from real or simulated environments. An artifact (e.g., network event, potential malware sample, suspicious email) is deemed malicious or non-malicious based on its similarity to the learned model at runtime. However, the training of the models has been historically limited to only those features available at runtime. In this paper, we consider an alternate learning approach that trains models using "privileged" information--features available at training time but not at runtime--to improve the accuracy and resilience of detection systems. In particular, we adapt and extend recent advances in knowledge transfer, model influence, and distillation to enable the use of forensic or other data unavailable at runtime in a range of security domains. An empirical evaluation shows…
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