论文标题

分散的联合学习:愿景,分类学和未来的方向

Dispersed Federated Learning: Vision, Taxonomy, and Future Directions

论文作者

Khan, Latif U., Saad, Walid, Han, Zhu, Hong, Choong Seon

论文摘要

物联网(IoT)基于智能应用程序的持续部署促进了机器学习作为关键技术推动者的采用。为了克服集中机器学习的隐私和间接费用挑战,最近对联合学习的概念引起了重大兴趣。联合学习提供了设备上的隐私机器学习,而无需将最终设备数据传输到第三方位置。但是,由于使用端设备本地学习模型推断聚合服务器的功能,联合学习仍然存在隐私问题。此外,由于聚合服务器的故障,联合学习过程可能会失败(例如,由于恶意攻击或身体缺陷)。除了隐私和鲁棒性问题外,通过物联网网络的联合学习还需要大量的培训沟通资源。为了应对这些问题,我们提出了一个基于真正的权力下放化的新型分散联合学习(DFL)的新颖概念。我们认为,DFL将作为基于物联网的智能行业和智能运输系统等各种基于物联网的智能应用程序的联合学习的实际实施。首先,提出了DFL的基本面。其次,通过对各种DFL方案进行定性分析设计了分类学。第三,通过基于匹配的理论解决方案提出了针对物联网网络的DFL框架。最后,提出了对未来研究方向的前景。

The ongoing deployment of the Internet of Things (IoT)-based smart applications is spurring the adoption of machine learning as a key technology enabler. To overcome the privacy and overhead challenges of centralized machine learning, there has been a significant recent interest in the concept of federated learning. Federated learning offers on-device, privacy-preserving machine learning without the need to transfer end-devices data to a third party location. However, federated learning still has privacy concerns due to sensitive information inferring capability of the aggregation server using end-devices local learning models. Furthermore, the federated learning process might fail due to a failure in the aggregation server (e.g., due to a malicious attack or physical defect). Other than privacy and robustness issues, federated learning over IoT networks requires a significant amount of communication resources for training. To cope with these issues, we propose a novel concept of dispersed federated learning (DFL) that is based on the true decentralization. We opine that DFL will serve as a practical implementation of federated learning for various IoT-based smart applications such as smart industries and intelligent transportation systems. First, the fundamentals of the DFL are presented. Second, a taxonomy is devised with a qualitative analysis of various DFL schemes. Third, a DFL framework for IoT networks is proposed with a matching theory-based solution. Finally, an outlook on future research directions is presented.

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