论文标题
线性多任务网络的隐私保护分布式投影LMS
Privacy-Preserving Distributed Projection LMS for Linear Multitask Networks
论文作者
论文摘要
我们通过线性多任务网络开发了一个保护隐私的分布式投影最小平方(LMS)策略,在该网络中,代理的局部关注或任务是线性相关的。每个代理商不仅有兴趣通过与邻近代理商的网络合作来改善其本地推理性能,还对保护自己的任务免受隐私泄漏的影响。在我们提出的策略中,每次瞬间,每个代理商都会发送一个嘈杂的估计值,这是其本地中间估计,其零均值添加剂损坏的邻近代理商损坏了。我们得出了足够的条件,可以确定将噪声添加到每个代理商的中间估计中,以实现网络均值差异和推理隐私约束之间的最佳权衡。我们提出了一种分布式和自适应策略,以计算添加噪声力,并研究拟议策略的平均和均值行为以及保护隐私的绩效。仿真结果表明,我们的策略能够平衡估计准确性和隐私保护之间的权衡。
We develop a privacy-preserving distributed projection least mean squares (LMS) strategy over linear multitask networks, where agents' local parameters of interest or tasks are linearly related. Each agent is interested in not only improving its local inference performance via in-network cooperation with neighboring agents, but also protecting its own individual task against privacy leakage. In our proposed strategy, at each time instant, each agent sends a noisy estimate, which is its local intermediate estimate corrupted by a zero-mean additive noise, to its neighboring agents. We derive a sufficient condition to determine the amount of noise to add to each agent's intermediate estimate to achieve an optimal trade-off between the network mean-square-deviation and an inference privacy constraint. We propose a distributed and adaptive strategy to compute the additive noise powers, and study the mean and mean-square behaviors and privacy-preserving performance of the proposed strategy. Simulation results demonstrate that our strategy is able to balance the trade-off between estimation accuracy and privacy preservation.