基于深度强化学习的防御策略选择

Axel Charpentier, N. Cuppens-Boulahia, F. Cuppens, Reda Yaich
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引用次数: 1

摘要

欺骗和移动目标防御技术是两种旨在通过向攻击者提供虚假信息或不确定性来增加攻击成本的方法。鉴于这些策略的数量在不断增加,而且它们并非都能有效地对付相同类型的攻击,因此了解如何根据环境和攻击者选择最佳的策略非常重要。因此,我们提出了一个计算机系统中的攻击者/防御者对抗模型,该模型考虑了玩家感知的不对称性。为了在我们的模型上模拟攻击,提出了一个基于网络杀伤链主要阶段的基本攻击者场景。由于模型的复杂性,分析确定最优解是困难的。此外,由于模型中存在大量可能的状态,因此使用Deep Q-Learning算法来训练防御智能体,使其根据观察到的攻击者的行为选择最佳防御策略。
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Deep Reinforcement Learning-Based Defense Strategy Selection
Deception and Moving Target Defense techniques are two types of approaches that aim to increase the cost of the attacks by providing false information or uncertainty to the attacker’s perception. Given the growing number of these strategies and the fact that they are not all effective against the same types of attacks, it is essential to know how to select the best one to use depending on the environment and the attacker. We therefore propose a model of attacker/defender confrontation in a computer system that takes into account the asymmetry of the players’ perceptions. To simulate attacks on our model, a basic attacker scenario based on the main phases of the Cyber Kill Chain is proposed. Analytically determining an optimal solution is difficult due to the model’s complexity. Moreover, because of the large number of possible states in the model, Deep Q-Learning algorithm is used to train a defensive agent to choose the best defensive strategy according to the observed attacker’s actions.
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