Adversarial Machine Learning: Difficulties in Applying Machine Learning to Existing Cybersecurity Systems

Nick Rahimi, Jordan Maynor, B. Gupta
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引用次数: 8

Abstract

Machine learning is an attractive tool to make use of in various areas of computer science. It allows us to take a hands-off approach in various situations where previously manual work was required. One such area machine learning has not yet been applied entirely successfully is cybersecurity. The issue here is that most classical machine learning models do not consider the possibility of an adversary purposely attempting to mislead the machine learning system. If the possibility that incoming data will be deliberately crafted to mislead and break the machine learning system, these systems are useless in a cybersecurity setting. Taking this into account may allow us to modify existing security systems and introduce the power of machine learning to them.
对抗性机器学习:将机器学习应用于现有网络安全系统的困难
机器学习是一个有吸引力的工具,可以在计算机科学的各个领域中使用。它允许我们在以前需要手工工作的各种情况下采取不干涉的方法。机器学习尚未完全成功应用的一个领域是网络安全。这里的问题是,大多数经典的机器学习模型都没有考虑到对手故意试图误导机器学习系统的可能性。如果输入的数据有可能被故意制作来误导和破坏机器学习系统,那么这些系统在网络安全环境中是无用的。考虑到这一点,我们可以修改现有的安全系统,并将机器学习的力量引入其中。
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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