Comparison of Machine Learning-based anomaly detectors for Controller Area Network

A. Venturi, Dario Stabili, Francesco Pollicino, Emanuele Bianchi, Mirco Marchetti
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引用次数: 1

Abstract

This paper presents a comparative analysis of different Machine Learning-based detection algorithms designed for Controller Area Network (CAN) communication on three different datasets. This work focuses on addressing the current limitations of related scientific literature, related to the quality of the publicly available datasets and to the lack of public implementations of the detection solutions presented in literature. Since these issues are preventing the reproducibility of published results and their comparison with novel detection solutions, we remark that it is necessary that all security researchers working in this field start to address them properly to advance the current state-of-the-art in CAN intrusion detection systems. This paper strives to solve these issues by presenting a comparison of existing works on publicly available datasets.
基于机器学习的控制器局域网异常检测器比较
本文对三种不同数据集的控制器局域网(CAN)通信设计的基于机器学习的检测算法进行了比较分析。这项工作的重点是解决当前相关科学文献的局限性,这些局限性与公开可用数据集的质量有关,也与文献中提出的检测解决方案缺乏公开实施有关。由于这些问题阻碍了已发表结果的可重复性及其与新检测解决方案的比较,我们注意到,所有在该领域工作的安全研究人员都有必要开始适当地解决这些问题,以推进CAN入侵检测系统的当前最先进水平。本文通过对公开数据集上的现有作品进行比较,努力解决这些问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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