Wang Yamin, Lam James, Lin Hong
IEEE Trans Cybern. 2022 Dec;52(12):13915-13926. doi: 10.1109/TCYB.2021.3135933. Epub 2022 Nov 18.
Differential privacy, which has been widely applied in industries, is a privacy mechanism effective in preventing malicious entities from breaching the privacy of an individual participant. It is usually achieved by adding random variables in the data. This article investigates a class of multivariable discrete-time multiagent systems with ϵ -differential privacy preserved. A novel information-masking mechanism is proposed, in which the information of each state transmitted to different neighbors is obscured by adding independent random noises. Then, the mean-square consensus conditions, and the upper bound and lower bound of the convergence rate are obtained. Moreover, the conditions for the convergence rate reaching its upper bound are established. The results can be applied to the average mean-square consensus. In addition, a necessary and sufficient condition is presented under which agents can preserve the dynamics of agents ϵ -differentially private at any time instant.
差分隐私已在诸多行业中广泛应用,它是一种能有效防止恶意实体侵犯个体参与者隐私的隐私机制。通常通过在数据中添加随机变量来实现。本文研究了一类保持(\epsilon)-差分隐私的多变量离散时间多智能体系统。提出了一种新颖的信息掩码机制,其中通过添加独立随机噪声来掩盖传输给不同邻居的每个状态的信息。然后,得到了均方一致性条件以及收敛速率的上界和下界。此外,还建立了收敛速率达到其上界的条件。这些结果可应用于平均均方一致性。另外,给出了一个充要条件,在该条件下智能体在任何时刻都能保持(\epsilon)-差分隐私的智能体动态特性。