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Interdependent Strategic Security Risk Management With Bounded Rationality in the Internet of Things

机译:物联网中具有无限合理性的相互依赖的战略安全风险管理

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With the increasing connectivity enabled by the Internet of Things (IoT), security becomes a critical concern, and users should invest to secure their loT applications. Due to the massive devices in the IoT network, users cannot be aware of the security policies taken by all its connected neighbors. Instead, a user makes security decisions based on the cyber risks that he perceives by observing a selected number of nodes. To this end, we propose a model which incorporates the limited attention or bounded rationality nature of players in the ha. Specifically, each individual builds a sparse cognitive network of nodes to respond to. Based on this simplified cognitive network representation, each user then determines his security management policy by minimizing his own real-world security cost. The bounded rational decision-makings of players and their cognitive network formations are interdependent and thus should be addressed in a holistic manner. We establish a games-ingames framework and propose a Gestalt Nash equilibrium (GNE) solution concept to characterize the decisions of agents and quantify their risk of hounded perception due to the limited attention. In addition, we design a proximal-based iterative algorithm to compute the GNE. With case studies of smart communities, the designed algorithm can successfully identify the critical users whose decisions need to be taken into account by the other users during the security management.
机译:随着物联网(IoT)所实现的连接性的提高,安全性已成为至关重要的问题,用户应进行投资以保护其loT应用程序。由于物联网网络中的大型设备,用户无法了解其所有已连接邻居所采取的安全策略。取而代之的是,用户通过观察选定数量的节点,根据其感知的网络风险做出安全决策。为此,我们提出了一个模型,该模型包含了游戏者中有限的注意力或有限理性的本质。具体来说,每个人都建立一个稀疏的节点认知网络来响应。基于此简化的认知网络表示,每个用户然后通过最小化自己的实际安全成本来确定其安全管理策略。玩家的有限理性决策及其认知网络的形成是相互依存的,因此应该以整体的方式加以解决。我们建立了一个游戏-游戏引擎框架,并提出了格式塔纳什纳什均衡(GNE)解决方案概念,以描述代理人的决策并量化由于注意力有限而造成的感知障碍的风险。此外,我们设计了一种基于近端的迭代算法来计算GNE。通过对智能社区的案例研究,设计的算法可以成功识别关键用户,在安全管理过程中其他用户需要考虑其决策。

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