论文标题

CB-DSL:在非i.i.d上的沟通效率和拜占庭式分布群学习。数据

CB-DSL: Communication-efficient and Byzantine-robust Distributed Swarm Learning on Non-i.i.d. Data

论文作者

Fan, Xin, Wang, Yue, Huo, Yan, Tian, Zhi

论文摘要

IoT设备在边缘网络中收集的有价值的数据以及ML的复兴刺激了Edge AI的最新趋势。但是,最近的FL方法面临着主要的挑战,包括Edge IoT方案中的通信瓶颈,数据异质性和安全性问题,尤其是在配备有限数据和传输资源的大型IoT设备中采用用于分布式学习时。同时,大多数现有文献都忽略了物联网系统的群体性质,该文献要求分布式学习算法的新设计。受到群落生物生物智能(BI)成功的启发,我们通过对AI-able-ablebable-ablen启用的随机梯度下降和双性恋颗粒颗粒群的整体整体整体整体整体整体整体整合,为群体物联网(称为沟通效率和拜占庭式分布分布群学习(CB-DSL))提出了一种新颖的边缘学习方法。处理非i.i.d。数据问题和拜占庭攻击,在CB-DSL中引入了全球数据样本,并在物联网工人中共享,这不仅可以有效地减轻本地数据异质性,还使能够充分利用群体智能的探索探索机制。此外,我们向理论上提供收敛分析,证明所提出的CB-DSL优于标准FL,具有更好的收敛行为。此外,为了衡量引入全球共享数据集的有效性,我们还通过得出其上限来评估模型差异,这与本地IoT设备的数据分布与整个数据集的总体分布之间的距离有关。数值结果验证了所提出的CB-DSL在更快的收敛速度,更高的收敛精度,较低的通信成本以及对非I.I.D的稳健性方面优于现有基准。数据和拜占庭攻击。

The valuable data collected by IoT devices in edge networks together with the resurgence of ML stimulate the latest trend of edge AI. However, recent FL methods face major challenges including communication bottleneck, data heterogeneity and security concerns in edge IoT scenarios, especially when being adopted for distributed learning among massive IoT devices equipped with limited data and transmission resources. Meanwhile, the swarm nature of IoT systems is overlooked by most existing literature, which calls for new designs of distributed learning algorithms. Inspired by the success of biological intelligence (BI) of gregarious organisms, we propose a novel edge learning approach for swarm IoT, called communication-efficient and Byzantine-robust distributed swarm learning (CB-DSL), through a holistic integration of AI-enabled stochastic gradient descent and BI-enabled particle swarm optimization. To deal with non-i.i.d. data issues and Byzantine attacks, global data samples are introduced in CB-DSL and shared among IoT workers, which not only alleviates the local data heterogeneity effectively but also enables to fully utilize the exploration-exploitation mechanism of swarm intelligence. Further, we provide convergence analysis to theoretically demonstrate that the proposed CB-DSL is superior to the standard FL with better convergence behavior. In addition, to measure the effectiveness of the introduction of the globally shared dataset, we also evaluate the model divergence by deriving its upper bound, which is related to the distance between the data distribution at local IoT devices and the population distribution for the whole datasets. Numerical results verify that the proposed CB-DSL outperforms the existing benchmarks in terms of faster convergence speed, higher convergent accuracy, lower communication cost, and better robustness against non-i.i.d. data and Byzantine attacks.

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