2021
DOI: 10.48550/arxiv.2111.00097
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Evaluation of an Anomaly Detector for Routers using Parameterizable Malware in an IoT Ecosystem

Abstract: This work explores the evaluation of a machine learning anomaly detector using custom-made parameterizable malware in an Internet of Things (IoT) Ecosystem. It is assumed that the malware has infected, and resides on, the Linux router that serves other devices on the network, as depicted in Figure 1. This IoT Ecosystem was developed as a testbed to evaluate the efficacy of a behavior-based anomaly detector. The malware consists of three types of custom-made malware: ransomware, cryptominer, and keylogger, whic… Show more

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