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Towards Self-Defense of Non-Stationary Systems

机译:走向非固定系统的自卫

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摘要

One of the major trends in research on Intrusion Response Systems is to use a model of the system to be protected and/or a model of the attacker to predict the evolution of the system and of the strategy of the attacker. However, very often, modeled systems exhibit a non-stationary behavior due to changes in their configuration, in the software base and in the users behavior. If not properly captured by the system model, such a non-stationary behavior could lead to divergences between the expected and the actual behaviors, thus invalidating the model-based approach. In this paper, we introduce a model-free technique for self-defense of non-stationary systems based on Q-Learning. We experimentally show that the proposed approach is able to effectively capture the dynamics of the underlying system and quickly adapts to changes in the environment.
机译:入侵响应系统研究的主要趋势之一是使用要保护的系统模型和/或攻击者模型来预测系统的演化和攻击者的策略。但是,建模系统经常会由于其配置,软件库和用户行为的变化而表现出不稳定的行为。如果系统模型未正确捕获,那么这种非平稳行为可能导致预期行为与实际行为之间出现差异,从而使基于模型的方法无效。在本文中,我们介绍了一种基于Q学习的无模型非平稳系统自卫技术。我们通过实验表明,所提出的方法能够有效地捕获底层系统的动态并迅速适应环境的变化。

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