对抗环境中的拓扑设计、博弈和动力学

IF 13.8 1区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
E. Ciftcioglu, Siddharth Pal, K. Chan, D. Cansever, A. Swami, Ambuj K. Singh, P. Basu
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引用次数: 10

摘要

我们研究了一组符合策略的拓扑中的网络拓扑设计问题,作为设计者和对手之间的博弈。在任何时刻,设计者的目标都是在一组策略兼容的拓扑中,根据期望的网络属性以最优拓扑操作网络。同时,对手会反对设计者试图在次优拓扑中强制操作。具体来说,如果设计者和攻击者在当前拓扑中选择相同的链路分别进行防御/增长和攻击,则后者将受到挫败。但是,如果防御者没有正确猜测攻击者的攻击位置,从而在其他地方进行攻击,则在攻击成功后,拓扑将恢复到符合策略的最佳配置。在此博弈中,我们证明了各种混合策略均衡的存在性,并系统地研究了其结构性质。我们研究了参数的影响,如成功攻击的概率,并表征了底层马尔可夫链的稳态行为。直觉上的对抗策略是攻击最重要的环节,而纳什均衡策略则是让设计师保护最关键的环节,让对手集中攻击次要的环节。我们通过两个使用网络拓扑示例集的用例来验证这些属性。接下来,我们考虑一个多阶段框架,其中设计者不仅对瞬时网络属性成本感兴趣,而且对许多时间实例的贴现成本感兴趣。我们建立了多阶段均衡策略的结构属性,并证明了与单次博弈产生的策略相比,应用基于Q-Learning和Rollout方法的算法可以为设计者带来显著的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topology Design Games and Dynamics in Adversarial Environments
We study the problem of network topology design within a set of policy-compliant topologies as a game between a designer and an adversary. At any time instant, the designer aims to operate the network in an optimal topology within the set of policy compliant topologies with respect to a desired network property. Simultaneously, the adversary counters the designer trying to force operation in a suboptimal topology. Specifically, if the designer and the attacker choose the same link in the current topology to defend/grow and attack, respectively, then the latter is thwarted. However, if the defender does not correctly guess where the attacker is going to attack, and, hence, acts elsewhere, the topology reverts to the best policy-compliant configuration after a successful attack. We show the existence of various mixed strategy equilibria in this game and systematically study its structural properties. We study the effect of parameters, such as probability of a successful attack, and characterize the steady state behavior of the underlying Markov chain. While the intuitive adversarial strategy here is to attack the most important links, the Nash equilibrium strategy is for the designer to defend the most crucial links and for the adversary to focus attack on the lesser crucial links. We validate these properties through two use cases with example sets of network topologies. Next, we consider a multi-stage framework where the designer is not only interested in the instantaneous network property costs but a discounted sum of costs over many time instances. We establish structural properties of the equilibrium strategies in the multi-stage setting, and also demonstrate that applying algorithms based on the Q-Learning and Rollout methods can result in significant benefits for the designer compared with strategies resulting from a one-shot based game.
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来源期刊
CiteScore
30.00
自引率
4.30%
发文量
234
审稿时长
6 months
期刊介绍: The IEEE Journal on Selected Areas in Communications (JSAC) is a prestigious journal that covers various topics related to Computer Networks and Communications (Q1) as well as Electrical and Electronic Engineering (Q1). Each issue of JSAC is dedicated to a specific technical topic, providing readers with an up-to-date collection of papers in that area. The journal is highly regarded within the research community and serves as a valuable reference. The topics covered by JSAC issues span the entire field of communications and networking, with recent issue themes including Network Coding for Wireless Communication Networks, Wireless and Pervasive Communications for Healthcare, Network Infrastructure Configuration, Broadband Access Networks: Architectures and Protocols, Body Area Networking: Technology and Applications, Underwater Wireless Communication Networks, Game Theory in Communication Systems, and Exploiting Limited Feedback in Tomorrow’s Communication Networks.
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