首页> 外文期刊>Kybernetika >HANDLING A KULLBACK-LEIBLER DIVERGENCE RANDOM WALK FOR SCHEDULING EFFECTIVE PATROL STRATEGIES IN STACKELBERG SECURITY GAMES
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HANDLING A KULLBACK-LEIBLER DIVERGENCE RANDOM WALK FOR SCHEDULING EFFECTIVE PATROL STRATEGIES IN STACKELBERG SECURITY GAMES

机译:处理KACKBACK-LEIBLER散布随机游走,以调度STACKELBERG安全游戏中有效的PATR策略

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This paper presents a new model for computing optimal randomized security policies in non-cooperative Stackelberg Security Games (SSGs) for multiple players. Our framework rests upon the extraproximal method and its extension to Markov chains, within which we explicitly compute the unique Stackelberg/Nash equilibrium of the game by employing the Lagrange method and introducing the Tikhonov regularization method. We also consider a game-theory realization of the problem that involves defenders and attackers performing a discrete-time random walk over a finite state space. Following the Kullback-Leibler divergence the players' actions are fixed and, then the next-state distribution is computed. The player's goal at each time step is to specify the probability distribution for the next state. We present an explicit construction of a computationally efficient strategy under mild defenders and attackers conditions and demonstrate the performance of the proposed method on a simulated target tracking problem.
机译:本文提出了一种新的模型,用于计算针对多个参与者的非合作Stackelberg安全游戏(SSG)中的最佳随机安全策略。我们的框架基于外部方法及其对马尔可夫链的扩展,在其中我们通过采用Lagrange方法并引入Tikhonov正则化方法来显式计算游戏的唯一Stackelberg / Nash平衡。我们还考虑了问题的博弈论实现,其中涉及防御者和攻击者在有限状态空间上执行离散时间的随机游走。在Kullback-Leibler背离之后,玩家的动作将被固定,然后计算下一个状态的分布。玩家在每个时间步骤的目标是指定下一个状态的概率分布。我们提出了在轻度防御者和攻击者条件下的一种高效计算策略的显式构造,并证明了该方法在模拟目标跟踪问题上的性能。

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