论文标题
对抗机器学习攻击和网络安全域中的防御方法
Adversarial Machine Learning Attacks and Defense Methods in the Cyber Security Domain
论文作者
论文摘要
近年来,机器学习算法,更具体地说是深度学习算法,已在包括网络安全在内的许多领域中广泛使用。但是,机器学习系统很容易受到对抗性攻击的影响,这限制了机器学习的应用,尤其是在非稳态的,对抗环境中,例如网络安全域,那里存在实际的对手(例如,恶意软件开发人员)。本文全面地总结了基于机器学习技术对安全解决方案的对抗性攻击的最新研究,并阐明了它们构成的风险。首先,对抗性攻击方法是根据其发生阶段以及攻击者的目标和能力来表征的。然后,我们将对抗性攻击和防御方法在网络安全域中的应用进行分类。最后,我们重点介绍了最近的研究中确定的一些特征,并讨论了其他对抗性学习领域对网络安全领域未来研究方向的最新进步的影响。本文是第一个讨论在网络安全域中实施端到端对抗攻击的独特挑战,以统一的分类法对其进行映射,并使用分类法来突出未来的研究方向。
In recent years machine learning algorithms, and more specifically deep learning algorithms, have been widely used in many fields, including cyber security. However, machine learning systems are vulnerable to adversarial attacks, and this limits the application of machine learning, especially in non-stationary, adversarial environments, such as the cyber security domain, where actual adversaries (e.g., malware developers) exist. This paper comprehensively summarizes the latest research on adversarial attacks against security solutions based on machine learning techniques and illuminates the risks they pose. First, the adversarial attack methods are characterized based on their stage of occurrence, and the attacker's goals and capabilities. Then, we categorize the applications of adversarial attack and defense methods in the cyber security domain. Finally, we highlight some characteristics identified in recent research and discuss the impact of recent advancements in other adversarial learning domains on future research directions in the cyber security domain. This paper is the first to discuss the unique challenges of implementing end-to-end adversarial attacks in the cyber security domain, map them in a unified taxonomy, and use the taxonomy to highlight future research directions.