Compression-based Privacy Preservation for Distributed Nash Equilibrium Seeking in Aggregative Games

Wei Huo, Xiaomeng Chen, Kemi Ding, Subhrakanti Dey, Ling Shi
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Abstract

This paper explores distributed aggregative games in multi-agent systems. Current methods for finding distributed Nash equilibrium require players to send original messages to their neighbors, leading to communication burden and privacy issues. To jointly address these issues, we propose an algorithm that uses stochastic compression to save communication resources and conceal information through random errors induced by compression. Our theoretical analysis shows that the algorithm guarantees convergence accuracy, even with aggressive compression errors used to protect privacy. We prove that the algorithm achieves differential privacy through a stochastic quantization scheme. Simulation results for energy consumption games support the effectiveness of our approach.
基于压缩的聚合博弈中分布式纳什均衡寻求的隐私保护
目前寻找分布式纳什均衡的方法要求博弈者向其邻居发送原始信息,从而导致通信负担和隐私问题。为了共同解决这些问题,我们提出了一种算法,利用随机压缩来节省通信资源,并通过压缩引起的随机误差来隐藏信息。我们的理论分析表明,该算法能保证收敛的准确性,即使使用了用于保护隐私的激进压缩误差。我们证明,该算法通过随机量化方案实现了差分隐私。能耗游戏的仿真结果支持我们方法的有效性。
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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