Recycled ADMM: Improve Privacy and Accuracy with Less Computation in Distributed Algorithms

Xueru Zhang, Mohammad Mahdi Khalili, M. Liu
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引用次数: 25

Abstract

Alternating direction method of multiplier (ADMM) is a powerful method to solve decentralized convex optimization problems. In distributed settings, each node performs computation with its local data and the local results are exchanged among neighboring nodes in an iterative fashion. During this iterative process the leakage of data privacy arises and can accumulate significantly over many iterations, making it difficult to balance the privacy-utility tradeoff. In this study we propose Recycled ADMM (R-ADMM), where a linear approximation is applied to every even iteration, its solution directly calculated using only results from the previous, odd iteration. It turns out that under such a scheme, half of the updates incur no privacy loss and require much less computation compared to the conventional ADMM. We obtain a sufficient condition for the convergence of R-ADMM and provide the privacy analysis based on objective perturbation.
循环ADMM:用更少的计算提高分布式算法的隐私性和准确性
乘法器交替方向法是求解分散凸优化问题的一种有效方法。在分布式设置中,每个节点使用其本地数据执行计算,本地结果以迭代方式在相邻节点之间交换。在此迭代过程中,会出现数据隐私泄露,并可能在多次迭代中显著累积,从而难以平衡隐私与效用之间的权衡。在本研究中,我们提出了循环ADMM (R-ADMM),其中对每个偶数迭代应用线性近似,其解仅使用前奇数迭代的结果直接计算。事实证明,与传统的ADMM相比,在这种方案下,一半的更新不会造成隐私损失,并且需要的计算量也少得多。得到了R-ADMM收敛的充分条件,并给出了基于客观摄动的隐私性分析。
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