数据驱动的基础设施网络多重拦截防御策略

Jing Jiang, Xiao Liu
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引用次数: 0

摘要

关键基础设施对国家安全、经济发展和社会稳定具有重要意义。随着经济全球化和信息技术的发展,网络复杂性和动态信息的不断增加,为基础设施网络的多重拦截防御策略提出了数据驱动的挑战。为了动态优化防御策略,建立了防御者与多个拦截者之间的数据驱动有限贝叶斯Stackelberg博弈模型。在该模型中,防御者在不完全了解拦截者的风险态度和客观权重的情况下,以最经济有效的方式提高网络性能;而拦截者在组件估值和有效性比信息不完全的情况下,以最具成本效益的方式破坏网络结构。在防御者与多个拦截者的动态交互中,拦截者对有效性比的知识根据贝叶斯更新规则进行更新。为了求解该模型,提出了基于最小深度二叉划分的分层算法,以获得强Stackelberg平衡。最后,以芷江网络为例,论证了该方法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven Defense Strategies for an Infrastructure Network against Multiple Interdictions
Critical infrastructures are significant for national security, economic development and social stability. With the development of economic globalization and information technology, the increasing network complexity and dynamic information have brought challenges to generate data-driven defense strategies for an infrastructure network against multiple interdictions. In order to optimize the defense strategy dynamically, we develop a data-driven finite Bayesian Stackelberg game model among a defender and multiple interdictors. In this model, the defender, with incomplete information on the interdictors’ risk attitude and objective weight, initiates to improve the network performance in the most cost-effective way; whereas the interdictor, with incomplete information on the valuation of components and effectiveness ratio, follows to destroy the network structure in the most cost-effective way. Over the dynamic interactions among the defender and multiple interdictors, the interdictor’s knowledge of the effectiveness ratio is updated by Bayesian updating rule. In order to solve the proposed model, smallest-depth binary-partition based hierarchical algorithm is developed to obtain the strong Stackelberg equilibrium. Finally, the practical applicability is demonstrated by a case study of Zhi Jiang network.
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