Optimal transport (OT) is a framework that can guide the design of efficient resource allocation strategies in a network of multiple sources and targets. To ease the computational complexity of large-scale transport design, we first develop a distributed algorithm based on the alternating direction method of multipliers (ADMM). However, such a distributed algorithm is vulnerable to sensitive information leakage when an attacker intercepts the transport decisions communicated between nodes during the distributed ADMM updates. To this end, we propose a privacy-preserving distributed mechanism based on output variable perturbation by adding appropriate randomness to each node's decision before it is shared with other corresponding nodes at each update instance. We show that the developed scheme is differentially private, which prevents the adversary from inferring the node's confidential information even knowing the transport decisions. Finally, we corroborate the effectiveness of the devised algorithm through case studies.
翻译:最佳运输(OT) 是一个框架,可以指导设计由多种来源和目标组成的网络的有效资源分配战略。为了减轻大规模运输设计的计算复杂性,我们首先根据乘数交替方向法(ADMM)开发一个分布式算法。然而,当攻击者拦截分布式ADMM更新期间在节点之间传递的运输决定时,这种分布式算法很容易被敏感信息泄漏。为此,我们提议一个基于产出变量干扰的隐私保护分配机制,在每次更新时将每个节点的决定与其他相应的节点共享之前,对每个节点的决定增加适当的随机性。我们表明,发达的计法是不同的私人的,它防止对手推导出节点的机密信息,即使知道运输决定。最后,我们通过案例研究来验证设计算法的有效性。