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Toward Personalized Deceptive Signaling for Cyber Defense Using Cognitive Models

机译:利用认知模型对网络防御的个性化欺骗信令

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Recent research in cybersecurity has begun to develop active defense strategies using game-theoretic optimization of the allocation of limited defenses combined with deceptive signaling. These algorithms assume rational human behavior. However, human behavior in an online game designed to simulate an insider attack scenario shows that humans, playing the role of attackers, attack far more often than predicted under perfect rationality. We describe an instance-based learning cognitive model, built in ACT-R, that accurately predicts human performance and biases in the game. To improve defenses, we propose an adaptive method of signaling that uses the cognitive model to trace an individual's experience in real time. We discuss the results and implications of this adaptive signaling method for personalized defense.
机译:最近的网络安全研究已经开始使用游戏理论优化的有限防御与欺骗性信号传导的分配的游戏理论优化开发主动防御策略。这些算法假设理性的人类行为。然而,在线游戏中的人类行为旨在模拟内幕攻击情景显示人类,扮演攻击者的角色,攻击远远往往在完美合理性下预测。我们描述了一个基于实例的学习认知模型,内置于ACT-R,可准确地预测游戏中的人类性能和偏见。为了改善防御,我们提出了一种自适应的信号传导方法,其使用认知模型实时追踪个人体验。我们讨论了这种自适应信号传导方法对个性化防御的结果和含义。

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