This work considers the problem of Distributed Mean Estimation (DME) over networks with intermittent connectivity, where the goal is to learn a global statistic over the data samples localized across distributed nodes with the help of a central server. To mitigate the impact of intermittent links, nodes can collaborate with their neighbors to compute local consensus which they forward to the central server. In such a setup, the communications between any pair of nodes must satisfy local differential privacy constraints. We study the tradeoff between collaborative relaying and privacy leakage due to the additional data sharing among nodes and, subsequently, propose a novel differentially private collaborative algorithm for DME to achieve the optimal tradeoff. Finally, we present numerical simulations to substantiate our theoretical findings.
翻译:这项工作考虑了间断连接网络分布平均估计(DME)的问题,目的是在中央服务器的帮助下,了解分布式节点局部数据样本的全球统计数据。为减轻间断连接的影响,节点可以与其邻居合作计算向中央服务器传送的当地共识。在这种设置中,任何对结点之间的通信都必须满足当地差异的隐私限制。我们研究了协作中继和隐私渗漏之间的平衡,因为节点之间共享了更多的数据,随后为DME提出了一种新的、差别化的私人合作算法,以实现最佳的权衡。最后,我们提出数字模拟,以证实我们的理论结论。</s>