论文标题

对深入强化学习的对抗性攻击的挑战和对策

Challenges and Countermeasures for Adversarial Attacks on Deep Reinforcement Learning

论文作者

Ilahi, Inaam, Usama, Muhammad, Qadir, Junaid, Janjua, Muhammad Umar, Al-Fuqaha, Ala, Hoang, Dinh Thai, Niyato, Dusit

论文摘要

深厚的增强学习(DRL)在现实世界中具有许多应用,这要归功于它迅速适应周围环境的出色能力。尽管它具有很大的优势,但DRL还是容易受到对抗攻击的影响,除非解决并缓解其脆弱性,否则它排除了其在现实生活中的关键系统和应用中的使用(例如,智能电网,交通控制和自动驾驶汽车)。因此,本文提供了一项全面的调查,讨论了基于DRL的系统的新兴攻击以及防御这些攻击的潜在对策。我们首先介绍有关DRL的一些基本背景,并在机器学习技术上发动了新兴的对抗性攻击。然后,我们调查了对手可以利用攻击DRL以及最先进的对策以防止此类攻击的漏洞的更多细节。最后,我们重点介绍了开发解决方案以应对基于DRL的智能系统攻击的解决方案的挑战。

Deep Reinforcement Learning (DRL) has numerous applications in the real world thanks to its outstanding ability in quickly adapting to the surrounding environments. Despite its great advantages, DRL is susceptible to adversarial attacks, which precludes its use in real-life critical systems and applications (e.g., smart grids, traffic controls, and autonomous vehicles) unless its vulnerabilities are addressed and mitigated. Thus, this paper provides a comprehensive survey that discusses emerging attacks in DRL-based systems and the potential countermeasures to defend against these attacks. We first cover some fundamental backgrounds about DRL and present emerging adversarial attacks on machine learning techniques. We then investigate more details of the vulnerabilities that the adversary can exploit to attack DRL along with the state-of-the-art countermeasures to prevent such attacks. Finally, we highlight open issues and research challenges for developing solutions to deal with attacks for DRL-based intelligent systems.

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