Green Differentially Private Coded Distributed Learning Over Near-Field MIMO Systems

IF 5.3 2区 计算机科学 Q1 TELECOMMUNICATIONS
Yilei Xue;Jun Wu;Jianhua Li;Shahid Mumtaz;Bolin Liao
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Abstract

In near-field systems, differentially private coded distributed learning can effectively alleviate straggler issues and ensure privacy. However, it consumes more energy and entails substantial time for transmission. To further enhance the energy and training efficiency of the system, in this paper, we propose GMCDL, a green multiple-input multiple-output coded distributed learning framework based on differential privacy for near-field systems. GMCDL introduces both artificial noise into Lagrange-coded datasets and natural noise throughout the transmission process to achieve privacy protection, while also employing multiple antennas for faster transmission. Consequently, it leads to increased energy efficiency and accelerated transmission speeds. Firstly, we analyze the achievable privacy protection levels across various parameter configurations and explore how adjustments in these parameters influence privacy protection performance. Then, we establish a theoretical upper bound for system convergence, revealing two significant findings: 1) there is a trade-off between convergence performance and privacy protection level, and 2) with other parameters remain fixed, higher constrained power, increased receive antennas, reduced transmit antennas, and a larger power allocation toward effective computing result yield enhanced convergence performance. Finally, we provide experimental results to demonstrate the impact of various parameters on the training process, which aligns with our theoretical analysis.
近场MIMO系统的绿色差分私有编码分布式学习
在近场系统中,差分私有编码分布式学习可以有效地缓解掉队问题,保证隐私。然而,它消耗更多的能量,需要大量的时间来传输。为了进一步提高系统的能量和训练效率,本文提出了一种基于差分隐私的近场系统绿色多输入多输出编码分布式学习框架GMCDL。GMCDL在拉格朗日编码数据集中引入人工噪声,在整个传输过程中引入自然噪声,实现隐私保护,同时采用多天线实现更快的传输。因此,它导致提高能源效率和加速传输速度。首先,我们分析了不同参数配置下可实现的隐私保护级别,并探讨了这些参数的调整如何影响隐私保护性能。然后,我们建立了系统收敛的理论上限,揭示了两个重要发现:1)收敛性能与隐私保护水平之间存在权衡;2)在其他参数保持不变的情况下,更高的约束功率,增加接收天线,减少发射天线,以及更大的功率分配以有效计算结果提高收敛性能。最后,我们提供了实验结果来证明各种参数对训练过程的影响,这与我们的理论分析一致。
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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来源期刊
IEEE Transactions on Green Communications and Networking
IEEE Transactions on Green Communications and Networking Computer Science-Computer Networks and Communications
CiteScore
9.30
自引率
6.20%
发文量
181
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