The Role of Machine Learning in Cybersecurity

Giovanni Apruzzese, P. Laskov, Edgardo Montes de Oca, Wissam Mallouli, Luis Brdalo Rapa, A. Grammatopoulos, Fabio Di Franco
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引用次数: 25

Abstract

Machine Learning (ML) represents a pivotal technology for current and future information systems, and many domains already leverage the capabilities of ML. However, deployment of ML in cybersecurity is still at an early stage, revealing a significant discrepancy between research and practice. Such a discrepancy has its root cause in the current state of the art, which does not allow us to identify the role of ML in cybersecurity. The full potential of ML will never be unleashed unless its pros and cons are understood by a broad audience. This article is the first attempt to provide a holistic understanding of the role of ML in the entire cybersecurity domain—to any potential reader with an interest in this topic. We highlight the advantages of ML with respect to human-driven detection methods, as well as the additional tasks that can be addressed by ML in cybersecurity. Moreover, we elucidate various intrinsic problems affecting real ML deployments in cybersecurity. Finally, we present how various stakeholders can contribute to future developments of ML in cybersecurity, which is essential for further progress in this field. Our contributions are complemented with two real case studies describing industrial applications of ML as defense against cyber-threats.
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机器学习在网络安全中的作用
机器学习(ML)是当前和未来信息系统的关键技术,许多领域已经利用了ML的功能。然而,ML在网络安全中的部署仍处于早期阶段,这表明研究与实践之间存在重大差异。这种差异的根本原因在于目前的技术状况,这使我们无法确定机器学习在网络安全中的作用。机器学习的全部潜力永远不会被释放,除非它的优点和缺点被广泛的受众所理解。本文是第一次尝试全面理解机器学习在整个网络安全领域中的作用——对于任何对这个主题感兴趣的潜在读者。我们强调了机器学习相对于人类驱动的检测方法的优势,以及机器学习在网络安全中可以解决的额外任务。此外,我们阐明了影响网络安全中真实ML部署的各种内在问题。最后,我们介绍了各种利益相关者如何为网络安全中的机器学习的未来发展做出贡献,这对于该领域的进一步发展至关重要。我们的贡献与两个真实案例研究相辅相成,这些案例研究描述了机器学习作为防御网络威胁的工业应用。
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