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Differential Privacy and Minimum-Variance Unbiased Estimation in Multi-agent Control Systems

机译:多主体控制系统中的差分隐私和最小方差无偏估计

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In a discrete-time linear multi-agent control system, where the agents are coupled via an environmental state, knowledge of the environmental state is desirable to control the agents locally. However, since the environmental state depends on the behavior of the agents, sharing it directly among these agents jeopardizes the privacy of the agents’ profiles, defined as the combination of the agents’ initial states and the sequence of local control inputs over time. A commonly used solution is to randomize the environmental state before sharing - this leads to a natural trade-off between the privacy of the agents’ profiles and the variance of estimating the environmental state. By treating the multi-agent system as a probabilistic model of the environmental state parametrized by the agents’ profiles, we show that when the agents’ profiles is e-differentially private, there is a lower bound on the l 1 induced norm of the covariance matrix of the minimum-variance unbiased estimator of the environmental state. This lower bound is achieved by a randomized mechanism that uses Laplace noise.
机译:在离散时间线性多代理控制系统中,其中代理通过环境状态耦合,需要了解环境状态以局部控制代理。但是,由于环境状态取决于代理程序的行为,因此在这些代理程序之间直接共享环境状态会危害到代理程序配置文件的私密性,即定义为代理程序初始状态和随时间变化的本地控制输入顺序的组合。一种常用的解决方案是在共享之前将环境状态随机化-这导致在代理人资料的隐私权与估算环境状态的方差之间自然地取舍。通过将多主体系统视为由主体概况参数化的环境状态的概率模型,我们表明,当主体概况是e-微分私有的时,协方差的l 1诱导范数有一个下限环境状态的最小方差无偏估计量的矩阵。此下限是通过使用拉普拉斯噪声的随机机制实现的。

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