超越图像领域的对抗性机器学习

Giulio Zizzo, C. Hankin, S. Maffeis, K. Jones
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引用次数: 26

摘要

机器学习系统在计算机视觉、自然语言处理和异常检测等广泛领域取得了巨大成功。然而,这样的系统很容易受到攻击者的攻击,他们可以通过引入小的扰动来引起故意的错误分类。随着机器学习系统被提议用于网络攻击检测,这类攻击者引起了严重关注。尽管如此,绝大多数对抗性机器学习安全研究都集中在图像领域。这项工作简要概述了用于网络攻击检测的对抗性机器学习和机器学习,并提出了传统的对抗性机器学习图像域与网络域之间的关键区别。最后,我们展示了对工业控制系统的对抗性机器学习攻击。
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Adversarial Machine Learning Beyond the Image Domain
Machine learning systems have had enormous success in a wide range of fields from computer vision, natural language processing, and anomaly detection. However, such systems are vulnerable to attackers who can cause deliberate misclassification by introducing small perturbations. With machine learning systems being proposed for cyber attack detection such attackers are cause for serious concern. Despite this the vast majority of adversarial machine learning security research is focused on the image domain. This work gives a brief overview of adversarial machine learning and machine learning used in cyber attack detection and suggests key differences between the traditional image domain of adversarial machine learning and the cyber domain. Finally we show an adversarial machine learning attack on an industrial control system.
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