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On the Optimality of Linear Signaling to Deceive Kalman Filters over Finite/Infinite Horizons

机译:有限/无限水平上欺骗卡尔曼滤波器的线性信号的最优性

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In this paper, we address the problem of obtaining optimal deceptive signaling strategies between two agents, a sender and a receiver, over an ideal channel. Different from classical (cooperative) communication settings, here, the agents select their strategies under two different cost measures. For the case when these costs are quadratic, we analyze the Stackelberg equilibrium, where the sender leads the game by committing his/her strategies beforehand. This is an infinite-dimensional optimization problem, where the sender needs to anticipate the receiver's reaction while selecting his/her policy within the general class of stochastic kernels. The specific model we adopt for the underlying information of interest is a discrete-time Markov process generated by a vector-valued linear dynamical system, and at each instant, the information is a realization of a square integrable multivariate random vector. Over both finite and infinite horizons, we show the optimality of memoryless, "linear" signaling rules when the receiver uses a Kalman filter to estimate its information of interest. We develop algorithms that deliver the optimal signaling strategies. Numerical analysis shows that the performance of the sender degrades slightly when the receiver uses the best nonlinear estimator even when the information of interest is a Rademacher random variable rather than Gaussian.
机译:在本文中,我们解决了在理想通道上在两个代理(发送者和接收者)之间获得最佳欺骗性信令策略的问题。与经典(合作)通信设置不同,代理在这里根据两种不同的成本度量来选择其策略。对于这些成本是二次方的情况,我们分析了Stackelberg均衡,即发送方通过预先确定其策略来领导博弈。这是一个无限维的优化问题,发送方需要在常规随机内核的一般类别中选择接收方的策略时预期接收方的反应。我们为感兴趣的基础信息采用的特定模型是由向量值线性动力学系统生成的离散时间马尔可夫过程,并且在每个时刻,该信息都是平方可积多元随机向量的实现。在有限和无限的水平上,当接收机使用卡尔曼滤波器估计其感兴趣的信息时,我们展示了无记忆的“线性”信令规则的最优性。我们开发可提供最佳信令策略的算法。数值分析表明,即使接收者使用的是Rademacher随机变量而不是高斯,当接收者使用最佳非线性估计器时,发送者的性能也会稍有下降。

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