论文标题
联合的物联网学习:最新进步,分类学和公开挑战
Federated Learning for Internet of Things: Recent Advances, Taxonomy, and Open Challenges
论文作者
论文摘要
物联网(IoT)将成熟,用于部署网络和应用程序管理的新型机器学习算法。但是,鉴于存在大量分布和私人数据集,在物联网中使用经典的集中学习算法是一项挑战。为了克服这一挑战,联邦学习可能是一个有前途的解决方案,它可以实现机上的机器学习,而无需将私人最终用户数据迁移到中央云。在联合学习中,仅在末端设备和聚合服务器之间传输学习模型更新。尽管联合学习可以比集中的机器学习提供更好的隐私保护,但它仍然存在隐私问题。在本文中,首先,我们介绍了联合学习朝着实现联合学习驱动的物联网应用程序的最新进展。为了严格评估最近的进步,划定了一组诸如稀疏,鲁棒性,量化,可伸缩性,安全性和隐私性等指标。其次,我们设计了一种分类法,用于通过物联网网络的联合学习。第三,我们提出了两种物联网用例,分散的联合学习可以比联邦学习提供更好的隐私保护。最后,我们通过可能的解决方案提出了一些开放研究挑战。
The Internet of Things (IoT) will be ripe for the deployment of novel machine learning algorithms for both network and application management. However, given the presence of massively distributed and private datasets, it is challenging to use classical centralized learning algorithms in the IoT. To overcome this challenge, federated learning can be a promising solution that enables on-device machine learning without the need to migrate the private end-user data to a central cloud. In federated learning, only learning model updates are transferred between end-devices and the aggregation server. Although federated learning can offer better privacy preservation than centralized machine learning, it has still privacy concerns. In this paper, first, we present the recent advances of federated learning towards enabling federated learning-powered IoT applications. A set of metrics such as sparsification, robustness, quantization, scalability, security, and privacy, is delineated in order to rigorously evaluate the recent advances. Second, we devise a taxonomy for federated learning over IoT networks. Third, we propose two IoT use cases of dispersed federated learning that can offer better privacy preservation than federated learning. Finally, we present several open research challenges with their possible solutions.