The new generation of cyber threats leverages advanced AI-aided methods, which make them capable to launch multi-stage, dynamic, and effective attacks. Current cyber-defense systems encounter various challenges to defend against such new and emerging threats. Modeling AI-aided threats through game theory models can help the defender to select optimal strategies against the attacks and make wise decisions to mitigate the attack's impact. This paper first explores the current state-of-the-art in the new generation of threats in which AI techniques such as deep neural network is used for the attacker and discusses further challenges. We propose a Markovian dynamic game that can evaluate the efficiency of defensive methods against the AI-aided attacker under a cloud-based system in which the attacker utilizes an AI technique to launch an advanced attack by finding the shortest attack path. We use the CVSS metrics to quantify the values of this zero-sum game model for decision-making.
翻译:新一代的网络威胁利用了先进的AI辅助方法,使得它们能够发动多阶段、动态和有效的攻击。当前的网络防御系统在抵御这种新的和正在出现的威胁方面面临着各种挑战。模拟AI辅助威胁可以通过游戏理论模型帮助捍卫者选择最佳攻击战略,并作出明智的决定来减轻攻击的影响。本文件首先探讨了新一代威胁中的最新状态,在新一代威胁中,如深神经网络等AI技术被用于攻击者,并讨论了进一步的挑战。我们提议了一个Markovian动态游戏,以评价在基于云的系统下对AI辅助攻击者采取防御方法的效率,攻击者利用AI技术通过找到最短的攻击路径来发动先进的攻击。我们使用CVSS衡量标准来量化这种零和游戏模式的决策价值。