The paper introduces RT-HMD, a Hardware-based Malware Detector (HMD) for mobile devices, that refines malware representation in segmented time-series through a Multiple Instance Learning (MIL) approach. It addresses the mislabeling issue in real-time HMDs, where benign segments in malware time-series incorrectly inherit malware labels, leading to increased false positives.
The key contributions are:
The training approach focuses on creating template conditional distributions using empirical histograms, capturing the likelihood of observing distributions in one channel conditioned on a representative value in another channel, given the application class (malware or benign). The MDS is defined as the Kullback-Leibler (KL) Divergence between these template conditional distributions, measuring the uniqueness of interactions.
During inference, the decision for each window is enhanced by the MDS, amplifying the signal for distinct malware behavior and attenuating it for benign behavior. This process adjusts the classifier's hyperplane, correcting false positives arising from the mislabeled benign segments.
Empirical analysis, using a hardware telemetry dataset collected from a mobile platform across 723 benign and 1033 malware samples, shows a 5% precision boost while maintaining recall, outperforming baselines affected by mislabeled benign segments.
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by Harshit Kuma... às arxiv.org 04-23-2024
https://arxiv.org/pdf/2404.13125.pdfPerguntas Mais Profundas