Wu Qiong, He Kaiwen, Chen Xu
IEEE Comput Graph Appl. 2020 May 8. doi: 10.1109/OJCS.2020.2993259.
Internet of Things (IoT) have widely penetrated in different aspects of modern life and many intelligent IoT services and applications are emerging. Recently, federated learning is proposed to train a globally shared model by exploiting a massive amount of user-generated data samples on IoT devices while preventing data leakage. However, the device, statistical and model heterogeneities inherent in the complex IoT environments pose great challenges to traditional federated learning, making it unsuitable to be directly deployed. In this paper we advocate a personalized federated learning framework in a cloud-edge architecture for intelligent IoT applications. To cope with the heterogeneity issues in IoT environments, we investigate emerging personalized federated learning methods which are able to mitigate the negative effects caused by heterogeneities in different aspects. With the power of edge computing, the requirements for fast-processing capacity and low latency in intelligent IoT applications can also be achieved. We finally provide a case study of IoT based human activity recognition to demonstrate the effectiveness of personalized federated learning for intelligent IoT applications.
物联网(IoT)已广泛渗透到现代生活的各个方面,许多智能物联网服务和应用正在涌现。最近,联邦学习被提出来,通过利用物联网设备上大量用户生成的数据样本训练一个全局共享模型,同时防止数据泄露。然而,复杂物联网环境中固有的设备、统计和模型异构性给传统联邦学习带来了巨大挑战,使其不适于直接部署。在本文中,我们倡导一种用于智能物联网应用的云边架构中的个性化联邦学习框架。为应对物联网环境中的异构性问题,我们研究了新兴的个性化联邦学习方法,这些方法能够减轻不同方面异构性所带来的负面影响。借助边缘计算的能力,智能物联网应用中对快速处理能力和低延迟的要求也能够得以实现。我们最后提供了一个基于物联网的人类活动识别案例研究,以证明个性化联邦学习对智能物联网应用的有效性。