动态网络攻击模拟:将改进的深度强化学习与 MITRE-ATT&CK 框架相结合

S. Oh, Jeongyoon Kim, Jongyoul Park
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引用次数: 0

摘要

随着网络攻击变得日益复杂和频繁,制定能够抵御对抗性攻击的强大网络安全措施至关重要。对抗模拟是一种有效的技术,可用于评估系统针对各类网络威胁的安全性。然而,传统的对抗模拟方法可能无法捕捉现实世界中网络攻击的复杂性和不可预测性。在本文中,我们提出了改进的深度强化学习(DRL)算法,利用 MITRE-ATT&CK 提供的真实世界场景,增强对抗式攻击模拟的网络安全性。我们首先介绍了传统对抗模拟所面临的挑战以及使用 DRL 的潜在优势。然后,我们介绍了一种基于 DRL 的改进型仿真框架,它可以真实地模拟复杂的动态网络攻击。我们使用一个网络攻击场景来评估所提出的 DRL 框架,并通过与现有 DRL 算法的比较来证明其有效性。总之,我们的研究结果表明,DRL 在增强真实世界环境中的网络安全对抗模拟方面具有巨大潜力。本文有助于开发更强大、更有效的网络安全措施,以适应数字世界不断变化的威胁环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Cyberattack Simulation: Integrating Improved Deep Reinforcement Learning with the MITRE-ATT&CK Framework
As cyberattacks become increasingly sophisticated and frequent, it is crucial to develop robust cybersecurity measures that can withstand adversarial attacks. Adversarial simulation is an effective technique for evaluating the security of systems against various types of cyber threats. However, traditional adversarial simulation methods may not capture the complexity and unpredictability of real-world cyberattacks. In this paper, we propose the improved deep reinforcement learning (DRL) algorithm to enhance adversarial attack simulation for cybersecurity with real-world scenarios from MITRE-ATT&CK. We first describe the challenges of traditional adversarial simulation and the potential benefits of using DRL. We then present an improved DRL-based simulation framework that can realistically simulate complex and dynamic cyberattacks. We evaluate the proposed DRL framework using a cyberattack scenario and demonstrate its effectiveness by comparing it with existing DRL algorithms. Overall, our results suggest that DRL has significant potential for enhancing adversarial simulation for cybersecurity in real-world environments. This paper contributes to developing more robust and effective cybersecurity measures that can adapt to the evolving threat landscape of the digital world.
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