Implementing existing federated learning in massive Internet of Things (IoT) networks faces critical challenges such as imbalanced and statistically heterogeneous data and device diversity. To this end, we propose a semi-federated learning (SemiFL) framework to provide a potential solution for the realization of intelligent IoT. By seamlessly integrating the centralized and federated paradigms, our SemiFL framework shows high scalability in terms of the number of IoT devices even in the presence of computing-limited sensors. Furthermore, compared to traditional learning approaches, the proposed SemiFL can make better use of distributed data and computing resources, due to the collaborative model training between the edge server and local devices. Simulation results show the effectiveness of our SemiFL framework for massive IoT networks. The code can be found at https://github.com/niwanli/SemiFL_IoT.
翻译:在大型物联网(IoT)网络中实施现有的联邦学习,面临诸如不平衡和统计多样性的数据和装置多样性等重大挑战。为此,我们提议一个半联邦学习框架(SemiFL),以提供实现智能IoT的潜在解决办法。通过无缝地整合中央和联邦模式,我们的SemiFL框架显示即使存在计算机有限的传感器,也可大幅缩放IoT设备的数量。此外,与传统学习方法相比,拟议的SemFL可以更好地利用分布的数据和计算资源,因为边缘服务器和地方设备之间开展了合作模式培训。模拟结果显示我们半联邦框架对大规模IoT网络的有效性。该代码可在https://github.com/niwanli/SemiFL_IoT上找到。</s>