PrivOpt:本质上私有的分布式优化算法

Amir-Salar Esteki, Solmaz S. Kia
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引用次数: 1

摘要

扩大网络解决方案采用的一个关键因素是确保实现分布式算法的网络内代理的本地数据隐私。本文在局部代价参数不暴露的情况下,考虑分布式优化问题中的隐私保护问题。当前的隐私保护方法通常会牺牲精确的收敛性或增加通信开销。我们提出了PrivOpt,一种本质上私有的分布式优化算法,其收敛速度呈指数级增长,没有任何收敛误差或使用额外的通信通道。我们证明,当局部代价参数的数目大于问题决策变量的维数时,即使恶意代理能够访问网络中所有的传入和传出消息,也无法获得其他代理的局部代价参数。作为一项应用研究,我们展示了我们所提出的PrivOpt算法如何在保证所有代理的局部成本参数保持私有的情况下解决最优资源分配问题。
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PrivOpt: an intrinsically private distributed optimization algorithm
A critical factor for expanding the adoption of networked solutions is ensuring local data privacy of in-network agents implementing a distributed algorithm. In this paper, we consider privacy preservation in the distributed optimization problem in the sense that local cost parameters should not be revealed. Current approaches to privacy preservation normally propose methods that sacrifice exact convergence or increase communication overhead. We propose PrivOpt, an intrinsically private distributed optimization algorithm that converges exponentially fast without any convergence error or using extra communication channels. We show that when the number of the parameters of the local cost is greater than the dimension of the decision variable of the problem, no malicious agent, even if it has access to all transmitted-in and -out messages in the network, can obtain local cost parameters of other agents. As an application study, we show how our proposed PrivOpt algorithm can be used to solve an optimal resource allocation problem with the guarantees that the local cost parameters of all the agents stay private.
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