Differentially Private Multi-Agent Constraint Optimization

Sankarshan Damle, Aleksei Triastcyn, B. Faltings, Sujit Gujar
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引用次数: 1

Abstract

Several optimization scenarios involve multiple agents that desire to protect the privacy of their preferences. There are distributed algorithms for constraint optimization that provide improved privacy protection through secure multiparty computation. However, it comes at the expense of high computational complexity and does not constitute a rigorous privacy guarantee for optimization outcomes, as the result of the computation itself may compromise agents’ preferences. In this work, we show how to achieve privacy, specifically differential privacy, through the randomization of the solving process. In particular, we present P-Gibbs, which adapts the SD-Gibbs algorithm to obtain differential privacy guarantees with much higher computational efficiency. Experiments on graph coloring and meeting scheduling show the algorithm’s privacy-performance trade-off for varying privacy budgets, and the SD-Gibbs algorithm.
差分私有多智能体约束优化
几个优化场景涉及多个希望保护其首选项隐私的代理。存在用于约束优化的分布式算法,这些算法通过安全的多方计算提供改进的隐私保护。然而,它是以高计算复杂度为代价的,并且不能对优化结果构成严格的隐私保证,因为计算本身的结果可能会损害代理的偏好。在这项工作中,我们展示了如何通过求解过程的随机化来实现隐私,特别是差分隐私。特别地,我们提出了P-Gibbs算法,它采用SD-Gibbs算法来获得差分隐私保证,计算效率更高。在图着色和会议调度方面的实验表明,该算法在不同的隐私预算和SD-Gibbs算法下实现了隐私与性能的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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